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211 results about "Sample entropy" patented technology

Sample entropy (SampEn) is a modification of approximate entropy (ApEn), used for assessing the complexity of physiological time-series signals, diagnosing diseased states. SampEn has two advantages over ApEn: data length independence and a relatively trouble-free implementation. Also, there is a small computational difference: In ApEn, the comparison between the template vector (see below) and the rest of the vectors also includes comparison with itself.

Method for remain useful life prognostic of lithium ion battery with model active updating strategy

InactiveCN103778280AEasy Adaptive AcquisitionFlexible inferenceElectrical testingSpecial data processing applicationsHealth indexEngineering
The invention relates to a method for remain useful life prognostic of a lithium ion battery with a model active updating strategy. According to a time series obtained through a voltage range of a discharge curve, conversion is conducted so that an equivalent discharge difference series obtained by discharge circulation at each time can be obtained, and therefore a health index time series of the ion battery is obtained; according to correspondence of a discharge voltage series and a time series, prognostic is conducted on the health index series to determine the remain useful life of the battery. Sampling entropy characteristic extraction and modeling are conducted on a charge voltage curve so that a relationship between a complete and accurate charge / discharge process and a battery performance index can be provided. On the basis of a performance index model, a short-term time series prognostic result is continuously updated to a known performance index data series and correlation analysis is conducted. According to the difference of the correlation degrees, retraining is conducted in the mode of training set expansion. The method is different from an existing iteration updating draining method, the prognostic model is updated dynamically, and therefore the prognostic precision is improved.
Owner:SHANGHAI JIAO TONG UNIV

Short-term wind power prediction method based on integrated empirical mode decomposition and deep belief network

The invention discloses a short-term wind power prediction method based on integrated empirical mode decomposition and a deep belief network. The short-term wind power prediction method comprises the steps of: decomposing an original wind power sequence into a series of intrinsic mode functions with different features by adopting integrated empirical mode decomposition, calculating sample entropy of the original wind power sequence and the intrinsic mode functions, combining the intrinsic mode functions with similar sample entropy values into a new sequence, and forming a random component, a detail component and a trend component; selecting an input variable set by adopting a partial autocorrelation function; constructing a training sample set according to the input variable set of each component; and establishing a deep belief network short-term wind power prediction model for each component, and superposing prediction results of the components, so as to obtain a final short-term wind power predicted value. The short-term wind power prediction method provided by the invention effectively improves the short-term wind power prediction precision, and can effectively solve the wind power prediction problem of the electric power system, so as to provide more reliable guarantee for large-scale wind power integration.
Owner:STATE GRID JIANGSU ELECTRIC POWER CO ELECTRIC POWER RES INST +3

Method of automatically removing ocular artifacts from electroencephalogram signal without setting threshold value

The invention provides a method of automatically removing ocular artifacts from an electroencephalogram signal without setting a threshold value, belongs to the field of biological information technology, and is mainly applied to the preprocessing process of the electroencephalogram signal. The method particularly comprises the following steps: performing an independent component decomposition to a captured electroencephalogram signal containing the ocular artifacts; gaining the kurtosis, the sequence renyi entropy and the sample entropy of each independent component as feature vectors, so as to automatically recognize an independent component containing the ocular artifacts by k-means cluster analysis, and setting the independent component to be zero and other components to be constant, reconstructing the signal, and obtaining a pure electroencephalogram signal. The method provided by the invention solves the problems that the artifacts are identified by means of manual work during the traditional process for removing the ocular artifacts, so that time and labors are wasted and the workload is heavy. In addition, the method provided by the invention can realize the purposes of automatically identifying and removing the ocular artifacts without setting the threshold value by manual work, so that the shortcoming in the existing method that a researcher is required to have definite future knowledges and strong subjectivity during the setting of the the threshold value is overcame.
Owner:BEIJING UNIV OF TECH

Gear fault diagnosis method based on SVD decomposition and noise reduction and correlation EEMD entropy features

The invention discloses a gear fault diagnosis method based on the SVD decomposition and noise reduction and correlation EEMD entropy features. The method includes utilizing an acceleration vibration sensor to acquire experimental platform gear vibration signals including four types of faults, namely gear normality, gear tooth breaking, gear tooth missing and gear wearing; performing noise reduction on the signals, of four gear states, containing simulated strong noise background of Gaussian white noise by the SVD decomposition method with correlation analysis and noise ratio optimization; decomposing the four types of noises by the EEMD method after noise reduction, and selecting valid IMF components according to correlative coefficients; performing sample entropy calculation on the valid IMF components, and establishing feature vectors composed of the IMF samples; identifying the four different types of gear faults through a PNN neural network. The method is effective and is capable of recognizing the gear fault types on the strong-noise background effectively.
Owner:CHINA UNIV OF MINING & TECH

Opening-closing fault diagnosis method for air circuit breaker based on vibration signals

The invention provides an opening-closing fault diagnosis method for an air circuit breaker based on vibration signals, wherein an acceleration sensor is used to collect machine body vibration signals generated during opening-closing courses of the air circuit breaker. The method comprises the steps that firstly, the acceleration sensor is used to collect the machine body vibration signals generated during opening-closing actions of the air circuit breaker and transform the vibration signals into digital signals, so that initial vibration signals are obtained; secondly, an improved wavelet packet threshold de-noising algorithm is used to process the collected vibration signals; thirdly, a complementary ensemble-average empirical mode decomposition algorithm is used to extract intrinsic mode function components from the de-noising vibration signals; fourthly, the quantity Z of the intrinsic mode function components is determined; fifthly, the intrinsic mode function components of the first Z orders are selected and extracted as sample entropies of a characteristic quantity; sixthly, binary tree multi-classifiers based on a relevance vector machine are established; and seventhly, the binary tree multi-classifiers based on the relevance vector machine obtained at the sixth step are used to establish a fault recognition model of the air circuit breaker.
Owner:HEBEI UNIV OF TECH

Automatic sleep staging method based on multi-parameter feature combination

The invention relates to an automatic sleep staging method based on a multi-parameter feature combination. The method includes the steps of collecting EEG signals, EMG signals, ECG signals and respiration signals, denoising all signals, extracting energy ratios of alpha, beta, theta and delta characteristic waves of the EEG signals, extracting the sample entropy of the EEG signals by a sample entropy algorithm, extracting the high frequency characteristic energy ratio of the EMG signals by a wavelet decomposition algorithm, extracting the sample entropy of the ECG signals by the sample entropy algorithm, extracting the mean value of the respiration signals by an averaging method, inputting the five feature parameters into a support vector machine for training and testing, thereby obtaining classification results. According to the automatic sleep staging method, the method of extracting EEG, EMG, ECG and respiration multiple characteristics is adopted to greatly improve the accuracy and generalization ability of sleep staging. The experimental results are reliable and accurate in sleep staging, thereby providing an effective basis for assessing sleep quality and being of a good application prospect.
Owner:SUZHOU INST OF BIOMEDICAL ENG & TECH CHINESE ACADEMY OF SCI

High-voltage circuit breaker mechanical state monitoring and fault diagnosis method

InactiveCN109061463ASimple and feasible fault simulationSolve the shortcomings of less fault dataVibration measurement in solidsCircuit interrupters testingRelative energyPrincipal component analysis
The invention discloses a high-voltage circuit breaker mechanical state monitoring and fault diagnosis method. The method comprises the following steps of 1) according to the historical fault data statistics result of high-voltage circuit breakers, carrying out an artificial fault simulation experiment on some common high-voltage circuit breakers to obtain fault data; 2) analyzing the fault current data, and extracting the current data characteristic quantity of each mechanism fault to be used as one of state diagnosis classification basis; 3) analyzing a fault vibration signal, adopting wavelet packet decomposition and sample entropy for processing high-frequency and low-frequency components to obtain corresponding wavelet packet relative energy and sample entropy respectively to be usedas vibration signal characteristic quantities; and 4) performing dimensionality reduction on the vibration signal characteristic quantities through principal component analysis to be used as one of state diagnosis classification basis, and carrying out state diagnosis on the circuit breaker by a support vector machine. By adoption of the method, the multi-dimensional information of the fault statecan be effectively utilized, so that the development of multi-parameter multi-dimensional mapping fault diagnosis of the circuit breaker can be promoted.
Owner:SOUTH CHINA UNIV OF TECH

Intelligent building microgrid power utilization behavior identification method

The invention discloses an intelligent building microgrid power utilization behavior identification method. The intelligent building microgrid power utilization behavior identification method is characterized in that power utilization big data is obtained through an intelligent building microgrid power utilization data acquisition terminal and monitoring of each environment sensor; then the obtained data is subjected to pretreatments (data integration, data filling and feature normalization); the load feature parameter of each powered device is extracted from a pretreated data sample by means of a kernel principal component analysis method; the environment factor of each power utilization behavior feature of the user and the contribution rates of different powered devices, i.e., the feature weight of each influence factor of fuzzy C-mean value clustering are determined by means of a multi-variable multi-scale sample entropy weight method; finally the obtained feature data set is subjected to cluster analysis through the fuzzy C-mean value clustering method and the user power utilization behavior identification accuracy and rapidity can be improved. According to the invention, the building microgrid user power utilization behavior can be effectively identified, and a basis and reference can be provided for scheduling of the building microgrid power utilization load by the power grid, and furthermore the fact that the user saves power in life, and power wasting behaviors are reduced is promoted.
Owner:XIANGTAN UNIV

Centrifugal pump fault diagnosis method based on complete ensemble empirical mode decomposition and random forest

InactiveCN105971901AAvoid Modal AliasingAvoid phenomena such as endpoint effectsEngine fuctionsPump controlFeature vectorFeature extraction
The invention discloses a centrifugal pump fault diagnosis method based on complete ensemble empirical mode decomposition and random forest. The method comprises the following steps: (1) decomposing a centrifugal pump vibrating signal obtained by a sensor into a series of IMF categories by utilizing CEEMD; (2) taking the sample entropy of the IMF categories as characteristic vector of the signal; and (3) carrying out fault diagnosis by taking the characteristic vector obtained by the CEEMD-sample entropy as input of a random forest classifier. According to the invention, the CEEMD and the sample entropy are used for characteristic extraction of the centrifugal pump vibrating signal, on one hand, the phenomena of modal aliasing and end effect occurring in EMD decomposition are avoided as far as possible; and on the other hand, characteristic extraction is relatively convenient and simple, calculated amount is small, and the characteristic extraction is not sensitive to data length and noise, thus being high in applicability. According to the invention, the random forest classifier is used for fault mode identification of the centrifugal pump, thus avoiding the phenomenon of overfitting caused by the fact that conventional classifiers depend too much on training samples, and improving the classification accuracy as far as possible.
Owner:BEIHANG UNIV

Automatic sleep staging method based on multiple electroencephalogram and electromyography characteristics

The invention relates to an automatic sleep staging method based on multiple electroencephalogram and electromyography characteristics. The method comprises the following steps: collecting an electroencephalogram signal and an electromyography signal; utilizing wavelet decomposition to remove high-frequency noises from the electroencephalogram signal and the electromyography signal; extracting an energy ratio of alpha, beta, theta and delta characteristic waves of the electroencephalogram signal after removing the noise, thereby acquiring a first characteristic parameter; utilizing a sample entropy method to extract a sample entropy of the electroencephalogram signal, thereby acquiring a second characteristic parameter; utilizing a wavelet decomposition algorithm to extract a high-frequency characteristic energy ratio in the electromyography signal, thereby acquiring a third characteristic parameter; and inputting the first characteristic parameter, the second characteristic parameter and the third characteristic parameter to a support vector machine and performing training and testing, thereby acquiring a classifying result. According to the invention, the method for extracting multiple EEG and EMG characteristics is adopted and a support vector machine classifier is combined, so that the accuracy of the sleep staging is promoted; a cross validation result proves that the method has certain generalization ability; an experimental result is high in reliability; and the application prospect is excellent.
Owner:SUZHOU INST OF BIOMEDICAL ENG & TECH CHINESE ACADEMY OF SCI

EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method

The invention discloses an EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method. The EMD based fiber-optic gyroscope temperature drift multi-scale extreme learning machine training method comprise the following steps of (1) adopting a bounded ensemble empirical mode decomposition (EEMD) method to respectively decompose drifting output data of a fiber-optic gyroscope in different temperature-changing-rate environments into a series of intrinsic mode functions; (2) adopting a sample entropy (SE) measurement theory to calculate SE values of the intrinsic mode functions (IMF) in the step (1); (3) determining an IMF set led by noise and an IMF set having different self-similarity features according to the fluctuation trend and sizes of the SE values; (4) superposing the IMF sets determined in the step (3) and having the similar self-similarity features to serve as ELM model training inputs, using temperature gradients at the temperature change rates corresponding to the group of output data as another input training ELM model, similarly, using different superposed self-similarity IMF and corresponding temperature gradients to generate different ELM models through training; (5) accumulating the multiple ELM models generated in the step (4) to obtain a final integrated multi-scale model.
Owner:SOUTHEAST UNIV

Radar radiation source signal identification method according to three-dimensional entropy characteristic

The invention discloses a radar radiation source signal identification method according to a three-dimensional entropy characteristic. The method of the invention is a novel identification method for settling defects in radiation source signal identification based on an in-pulse characteristic. According to the radar radiation source signal identification method, sample entropy, fuzzy entropy and normalized energy entropy are used as a three-dimensional characteristic vector of a signal. The sample entropy is used for describing complexity of a radiation source signal. The fuzzy entropy is used for measuring uncertainty of the signal. Furthermore the normalized energy entropy is utilized for describing distribution condition of the signal energy. According to the radar radiation source signal identification method, characteristic extraction is performed on six typical radar radiation source signals, and furthermore a support vector machine is used for performing classification testing. A testing result proves a fact that the extracted characteristic vector can well realize classification and identification on the radar radiation source signal in a relatively large signal-to-noise range, thereby preventing high effectiveness of the radar radiation source signal identification method.
Owner:AIR FORCE UNIV PLA

Fatigue brain electrical characteristic research method based on different experiment difficulties

The invention discloses a fatigue brain electrical characteristic research method based on different experiment difficulties. Mental fatigue is a gradual and cumulative phenomenon, and generally shows weakening of physiological activities of the human body. Fatigue brain electricity under different states is induced by setting two groups of Stroop experiments with different difficulties, and characteristic analysis is carried out on brain electrical signals in a waking state and in a fatigue state in the two groups of experiments by using wavelet packet decomposition and a sample entropy algorithm. Experimental results show that the relative energy of alpha waves and theta waves is increased from the waking state to the fatigue state, the relative energy of beta waves is obviously reduced (P<0.05), the ratio (P<0.05) of parameters alpha / beta and (alpha+theta) / beta is gradually increased along with deepening of fatigue, and sample entropy values of encephalic regions are in decreasing tendency; compared with the experiment group with high difficulty, parameter changes in low-difficulty tasks are more obvious, and therefore the parameters alpha / beta and (alpha+theta) / beta can serve as potential indicators for measuring mental fatigue and meanwhile can verify that proper increase of experiment difficulty can prevent generation of metal fatigue to a certain extent.
Owner:NANJING UNIV OF POSTS & TELECOMM

System and apparatus for wireless high-frequency temperature acquisition and analysis

We disclose a system, an apparatus, and a method for high frequency temperature monitoring and analysis. According to a disclosed embodiment the system comprises: (a) a wireless temperature acquisition and logging device especially designed for multi-day, high-frequency, and high-resolution temperature sampling; and (b) an analysis system implemented in a digital computer with one or more processors in order to analyze and characterize said temperature using a plurality of methods including complexity analysis techniques such as Lempel-Ziv complexity, Approximate Entropy, Sample Entropy, Multiscale Entropy, and Detrended Fluctuation Analysis; and other statistical time-series analysis techniques. According to one embodiment the temperature monitoring system is designed to capture the dynamic aspects of temperature in order to enable researchers and clinicians to study temperature regulation, thermal physiology, and clinical thermometry.
Owner:INNOVATEC

Method for recognizing and separating magnetotelluric signal and noise

ActiveCN107657242AIncrease the identification linkAvoid Modal AliasingCharacter and pattern recognitionElectromagnetic interferenceNoise suppression
The invention provides a method for recognizing and separating magnetotelluric signal and noise. Firstly, a magnetotelluric signal collected in a strong electromagnetic interference environment is equidistantly segmented, by optimizing inherent time-scale decomposition, each magnetotelluric signal segment is subjected to adaptive decomposition to obtain a rotational component, and a sample entropyand a fuzzy entropy of the rotational component are extracted. Then, the sample entropy and the fuzzy entropy are taken as joint feature parameters to carry out fuzzy C-means clustering, according tothe feature parameters and a clustering method, a measured magnetotelluric signal sequence is divided into two kinds including a useful signal and a strong interference signal. Finally, only a magnetotelluric signal segment which is recognized as the strong interference signal is subjected to noise suppression processing by using a wavelet threshold, and a reconstructed magnetotelluric signal isobtained after superposition. The method has high reliability.
Owner:HUNAN NORMAL UNIVERSITY

An optimal dispatching method of new energy power system based on sample entropy

ActiveCN109256799AVolatility minimizationAvoid wind and light abandonmentSingle network parallel feeding arrangementsWind energy generationElectricityNew energy
The invention relates to a new energy power system optimal dispatching method based on sample entropy, belonging to the field of new energy power system optimal dispatching in power system. At first,that invention predicts the output according to the new energy source, the wind pow and the photovoltaic power; New energy forms net load with traditional load. Secondly, the characteristics of the payload series are analyzed, and the sub-series are divided to calculate the entropy of the corresponding samples. Finally, the complexity of the payload subsequence is evaluated based on sample entropy, and the power role is adjusted according to the sample entropy reflecting the complexity. The traditional power supply can track the fluctuation of the payload flexibly. As to that problem of grid connection of new energy source in the electric power system, the invention propose that the net load is formed by the high proportion of new energy sources and the traditional load, and the phenomenonof abandoning wind and light is avoided; According to the fluctuation degree of the payload curve, the output state and interval of the thermal power unit are adjusted to minimize the fluctuation ofthe thermal power unit and maximize the renewable energy utilization efficiency and system economic benefits.
Owner:DALIAN UNIV OF TECH +1

Cyberspace security situation real-time detection method

The invention discloses a cyberspace security situation real-time detection method. The method comprises the following steps: original characteristic extraction that original network data packet characteristics are obtained from a network, multi-scale entropy calculations that sample entropy of an original data packet characteristic sequence is calculated at different time scales, detector training that a mature immunization detector is trained and generated by utilizing a sample entropy characteristic vector and a negative-selection algorithm at the different time scales, network threat security detection that a network sample is detected by utilizing the trained mature immunization detector at the different time scales, cyberspace security situation calculations that cyberspace security situations at the different time scales and different network layers, and situation visualization that the cyberspace security situations are expressed by different colors of curve charts at different time and the different network layers. The time scales considered in the method is relatively comprehensive, the fusion level is high, a situation assessment result is relatively accurate, a complex characteristics of a network behavior can be described, and the whole process of a network threat behavior can be carved in a fine-grained manner.
Owner:金润方舟科技股份有限公司

Real-time multi-channel automatic eye blink artifact eliminator

A real-time multi-channel automatic eye blink artifact eliminator includes a receiving unit for receiving independent component data; a temporary storage unit for saving pieces of the independent component data to form a data segment; a detection unit for detecting an eye blink artifact in the data segment through a sample entropy algorithm to generate a sample entropy value corresponding to the data segment; and a processing unit for determining whether the data segment contains the eye blink artifact according to the sample entropy value to generate an output result, eliminating the eye blink artifact according to the output result and outputting processed independent component data. The receiving unit continuously receives a next piece of the independent component data and the temporary storage unit discards the oldest one and adds a new one to form a new data segment, thereby continuously performing the eye blink artifact elimination to each data segment.
Owner:NAT CHIAO TUNG UNIV

N400 evoked potential lie detection method based on sample entropy

ActiveCN105249963AOvercome the Deficiency of Polygraph JudgmentStable lie recognition accuracySensorsPsychotechnic devicesPattern recognitionGeometric property
The invention provides an N400 evoked potential lie detection method based on sample entropy. The method comprises the following steps of extracting and synchronously amplifying electroencephalogram, collecting the electroencephalogram, receiving and synchronously storing the electroencephalogram, preprocessing the electroencephalogram, conducting superposition averaging on the electroencephalogram, extracting an electroencephalogram sample entropy feature value, conducting state judgment on whether a lie is told or not, measuring the complexity of the N400 induced electroencephalogram on the basis of the sample entropy, reflecting nonlinear features of the electroencephalogram, finding a feature threshold value for distinguishing whether a lie is told or not through statistical analysis of data, comparing the threshold value with an absolute value of the entropy gradient of probe stimulus and indifferent stimulus ERP electroencephalogram data samples, and judging whether a lie is told or not. The defects existing when lie testing judgment is performed by means of evoked potential waveform geometric properties in the prior art are overcome, so that the method has the advantage that the stable lie recognition accuracy can be effectively ensured.
Owner:SHAANXI NORMAL UNIV

Method of creating anesthetic consciousness index with artificial neural network

A method of creating an anesthetic consciousness index with an artificial neural network includes, obtaining physiological signals, including electroencephalographic signals and eye movement signals, from subjects during a physiological signal monitoring process; filtering noise out of the physiological signals by empirical mode decomposition (EMD); calculating sample entropy values of the noise-removed physiological signals; obtaining sample entropy value sets of the physiological signals; repeating the aforesaid steps to effectuate measurement, noise-filtering, and sample entropy value calculation of the subjects' physiological signals and thus obtain a sample entropy value set; and applying an artificial neural network in conducting regression analysis of the sample entropy value set and a set of levels of consciousness measured with a physiological signal monitor during the physiological signal monitoring process, thereby creating the anesthetic consciousness index model for evaluating the level of consciousness of an anesthetized patient during the physiological signal monitoring process.
Owner:NAT CHUNG SHAN INST SCI & TECH

Method for diagnosing mechanical states of distribution switch on basis of EMD sample entropy and FCM

The invention discloses a method for diagnosing mechanical states of a distribution switch on the basis of empirical mode decomposition (EMD) sample entropy and fuzzy c-means clustering (FCM). The method comprises the following steps that a piezoelectric accelerometer is mounted near to a main shaft of a switch operating mechanism, and the vibration signals of the distribution switch of different mechanical states at the off and on moments are collected through a data acquisition card and a waveform display storage platform; EMD time frequency decomposition is carried out on the collected vibration signals to obtain the limited number of intrinsic mode components of different frequency and unequal bandwidths and residual error components; the sample entropies of intrinsic mode functions (IMFs) of all orders of the vibration signals of different mechanical states are calculated, and a sample entropy array is formed as the characteristic quantity of the mechanical states of the distribution switch; the sample entropy array is used as the input of the FCM, and the mechanical states of the distribution switch are diagnosed through a fuzzy clustering method.
Owner:STATE GRID FUJIAN JINJIANG POWER SUPPLY +2

Brain electrical emotion identification method for extracting features based on empirical wavelet transformation

The present invention discloses a brain electrical emotion identification method for extracting features based on the empirical wavelet transformation. The brain electrical emotion identification method comprises the steps of according to the coherence between the brain electrical emotion data peripheral physiological signals and the brain electrical signal channels, selecting the brain electricalchannels having the highest coherence degrees as the feature extraction channels; extracting the brain electrical emotion features based on the empirical wavelet transformation, and obtaining a series of intrinsic mode functions after the empirical wavelet transformation decomposition; calculating the sample entropy of each intrinsic mode function, and constructing the feature vectors based on the sample entropy values to form a feature vector set; dividing the brain electrical emotion data into a plurality of types according to the two dimensions of arousal and titer, and using a support vector machine to identify the brain electrical emotion. The method of the present invention considers the non-linear features and the non-stationary features of the data in a brain electrical emotion data set simultaneously, thereby guaranteeing the classification precision, accuracy and execution speed of the method.
Owner:LIAONING NORMAL UNIVERSITY

Battery capacity estimation method and device

The invention provides a battery capacity estimation method and device. The method includes the steps: acquiring response conditions of batteries to be estimated and reference batteries in different states and under preset current pulsed excitation, and building estimation models of actual battery capacity in different environment temperature states according to voltage response sample entropy andcurrent capacity estimation valves of the reference batteries; estimating actual capacity of the batteries to be estimated in the different environment temperature states according to the voltage response sample entropy of the batteries to be estimated and the capacity estimation models. The different states include battery charge and discharge circulation frequency and battery environment temperature. According to the method, the estimation cost of the battery capacity can be effectively reduced, dependence on battery current, battery voltage and temperature sampling accuracy is reduced, themethod solves the technical problem of low estimation accuracy caused by inconsistent battery capacity in the aging circulation process, and the estimation effects of the batteries are improved.
Owner:BEIJING ELECTRIC VEHICLE

Student class listening attention evaluation method based on electroencephalogram analysis

The invention discloses a student class listening attention evaluation method based on electroencephalogram analysis. In order to solve the problem that the student class listening attention concentration degree is hard to express, the student class listening attention evaluation method based on electroencephalogram analysis comprises the steps of 1, collecting electroencephalograms of a student,wherein original electroencephalograms are collected, front first-class amplification treatment is performed on the original electroencephalograms, the electroencephalograms obtained after first-classamplification treatment are amplified again, and the amplified electroencephalograms are converted into digital signals; 2, analyzing the electroencephalograms, wherein working frequency interferenceof the electroencephalogram is removed, low-pass filtering treatment is performed on the electroencephalograms, ocular artifacts are removed, feature extraction and quantification are performed, anda sample entropy is obtained as the attention concentration degree; 3, sending the quantified attention concentration degree through a wireless sending device; 4, receiving the attention concentrationdegree data through a wireless receiving device; 5, storing the concentration degree data within a period of time; 6, showing the data through a visualized interface.
Owner:JILIN UNIV

Bearing health state identification method based on probabilistic neural network

A bearing health state identification method based on the probabilistic neural network comprises the first step of collecting original signals; the second step of selecting and evaluating parameters, wherein the capability for allocating known data of the selected parameters is evaluated according to a feature set and the selected statistic features, and the feature set is generated by a vibration signal worked out based on the principle of statistics; the third step of constructing a probabilistic neural network model; the fourth step of inputting the input parameters to the probabilistic neural network to carry out state identification. According to the method, the operating states of a bearing comprise a normal state, a sub-health state and a failure state, the health states of the bearing are evaluated based on the PNN, a sample entropy and the like are used for serving as the input feature parameters of the PNN, the distribution capability of the data is evaluated, and the recognized result of the bearing health states is obtained by experimentally comparing a traditional normal-failure model of the bearing states.
Owner:LIAONING UNIVERSITY

PCA-BP-based emotion recognition method and system

The embodiment of the invention discloses a PCA-BP-based emotion recognition method and system. The method comprises the steps that a first emotional sound spectrum feature vector of training audio isobtained by blending a first acoustic feature vector and a first sample entropy feature of the training audio; a PCA algorithm is adopted for conducting dimensionality reduction on the emotional sound spectrum feature vector, and a second emotional sound spectrum feature vector is obtained; the second emotional sound spectrum feature vectors of the training audio corresponding to various emotionsare input into a preset BP neural network model separately for training, and sound spectrum feature vector emotion models corresponding to various emotions are obtained; a second acoustic feature vector and a second sample entropy feature of to-be-detected audio are blended to obtain a third emotional sound spectrum feature vector of the to-be-detected audio, the third emotional sound spectrum feature vector is compared with all the acoustic feature vector emotion models, the emotion model matching degree is calculated, and the acoustic feature vector emotion model corresponding to the maximum emotion model matching degree is output. The technical problems that the current voice emotion recognition process is complex, the implement difficulty is high, the accuracy is low, and the efficiency is low are solved.
Owner:SPEAKIN TECH CO LTD

Method and device for evaluating coma degree

The invention provides a method and device for evaluating the coma degree. The method comprises: electroencephalogram data of a patient is acquired; the electroencephalogram data is pretreated, and purified electroencephalogram signals are obtained; according to the purified electroencephalogram signals, the coma degree of the patient is evaluated. According to the method, the coma degree of the patient is automatically evaluated according to the purified electroencephalogram signals of the coma patient, manual intervention in the evaluating process of the coma degree is lowered, the influence of subjective factors of medical personnel on the evaluating process is avoided, man-made erroneous judgment is avoided, the evaluating error is reduced, and the evaluating accuracy is improved. Sample entropy is applied to evaluation of the coma degree, the sample entropy corresponding to the purified electroencephalogram signals is calculated, according to a threshold value range of the sample entropy, the coma degree is evaluated, quantification evaluation of the coma degree is achieved, and the evaluation efficiency is greatly improved. Meanwhile, according to the purified electroencephalogram signals, prognosis judgment is automatically conducted, the sample entropy is applied to the prognosis judgment of the coma patient, and the efficiency and accuracy of the prognosis judgment are improved.
Owner:北京大智商医疗器械有限公司

Electrocerebral non-linear dual-measure feature extraction and fusion processing method

The invention discloses an electrocerebral non-linear dual-measure feature extraction and fusion processing method, and relates to the field of electrocerebral signals. The method comprises the following steps: acquiring an electrocerebral signal; performing data preprocessing on the electrocerebral signal; extracting an LZC (Leucocyte Zinc Content) complexity feature from preprocessed data; extracting a sample entropy feature, and performing feature analysis on the LZC complexity feature and the sample entropy feature; establishing a classification model with an SVM (Support Vector Machine) classifier by jointly taking the LZC value of the electrocerebral signal and a sample entropy value which are remarkably different as a feature parameter in order to classify and identify people in different psychological states. By adopting the method for classifying and identifying the electrocerebral signals of people in different psychological states, higher classifying accuracy can be achieved, and an objective evaluation index can be provided for the partition of people in different psychological states.
Owner:TIANJIN UNIV

Signal identification method of fiber perimeter early-warning system of airport

InactiveCN105023379AEfficient identificationTaking into account real-time requirementsBurglar alarmFiberEngineering
The invention relates to a signal identification method of a fiber perimeter early-warning system of an airport. The method comprises the following steps: (1) signal acquisition; to be specific, collecting a light signal by a perimeter early-warning system and converting the signal into an original electric signal X(n); (2), pretreatment; to be specific, carrying out processing like filtering and amplification on the original electric signal X(n) to obtain an electric signal X' (n); (3), downsampling; to be specific, carrying out downsampling on a disturbing signal to obtain an x(n); (4), time-frequency characteristic obtaining at a zero level; to be specific, carrying out processing on the signal x(n) after downsampling according to a formula to obtain a time-frequency characteristic; (5) characteristic extraction; to be specific, extracting a maximum value M, a zero-crossing frequency number K, frequency deviation D, a frequency sample entropy S, and a total signal energy amount E; and (6), intrusion classification; to be specific, inputting five typical characteristics into probabilistic neural networks of five input layers and determining an intrusion type based on comparison of output layers. With the method, a problem that the signal identification precision are affected by the non-stable characteristic of the output signal and the similarity of the intrusion signal and the false-alarm signal of the fiber perimeter early-warning system of the airport can be solved; different disturbance types can be identified effectively; and the real-time performance and practicability are high.
Owner:CIVIL AVIATION UNIV OF CHINA

Portable stimulating, awaking and evaluating system for disturbance of consciousness

A portable stimulating, awaking and evaluating system for disturbance of consciousness comprises an EEG acquisition device, a signal preprocessing device which is connected with the EEG acquisition device and used for extracting an independent source component from a first EEG using an independent component analysis algorithm, a digital filter device which is connected with a signal preprocessing device and used for carrying out digital filter process on a second EEG using an empirical mode decomposition algorithm so as to extract an effective third EEG, a feature extracting device which is connected with the digital filter device and used for extracting frequency spectrum features, the sample entropy and the approximation entropy, a classification and a recognition device which is connected with the feature extracting device and used for classifying and recognizing disturbance of consciousness using a support vector machine according to the spectrum features, the sample entropy and the approximation entropy, and an output device which is used for outputting a stimulating signal through a stimulator. The portable stimulating, awaking and evaluating system for disturbance of consciousness is simple in structure and good in portability, and the portable stimulating, awaking and evaluating system for disturbance of consciousness can be used for families and communities using stimulation therapy on disturbance of consciousness.
Owner:SHANGHAI UNIV OF MEDICINE & HEALTH SCI
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