Patents
Literature
Hiro is an intelligent assistant for R&D personnel, combined with Patent DNA, to facilitate innovative research.
Hiro

41 results about "Multidimensional scaling analysis" patented technology

Intelligent power distribution network fault identification method

InactiveCN106249101AAvoid setting calculationsFault location by conductor typesThree-phaseComputer science
The invention provides an intelligent power distribution network fault identification method. A wide area measurement system is used to upload information, and a multidimensional state monitoring matrix is formed by data preprocessing and data fusion, and then the multidimensional analysis of the matrix is carried out, and the LOF values of the matrix are calculated, and according to the LOF values of the various nodes of the matrix, the fault detection and the fault positioning of the intelligent power distribution network are realized. Wavelet transformation of three-phase voltage of a faulted part is carried out, and the wavelet singular entropy values of the three-phase voltage are used to build a fault characteristic sample database. Pre-classification of faults is carried out by using zero sequence voltage low frequency energy reflecting grounding fault information, and on the basis of the above mentioned pre-classification, an SVW fault type discrimination prediction model is built. The effective fault detection and the effective fault positioning of the intelligent power distribution network are realized, and the reasonable classification of the different fault types of the faulted areas is realized.
Owner:HUNAN UNIV

Isometric mapping based facial image recognition method

InactiveCN101706871AGood optimization of recognition effectCharacter and pattern recognitionHat matrixNear neighbor
An isometric mapping based facial image recognition method belongs to the technical field of image processing and comprises the following steps: processing the input images and expressing the images in the form of vectors; taking column vectors as training samples to constitute a training sample set, and then taking each training sample in the training sample set as a vertex to construct a neighborhood linked undirected weighed graph GX; computing the shortest path between every two training samples according to the neighborhood linked undirected weighed graph GX and establishing the shortest path matrix DG=(dG (i, j)); carrying out direct linear classification processing on the shortest path matrix and obtaining the optimal projection matrix W; and acting the optimal projection matrix W on a test set Dtest to reduce dimensions, thus obtaining the low-dimensional optimized feature samples, and then classifying the test set by the minimum distance method or the K-nearest neighbor method to obtain the face recognition results. The method simultaneously takes the features of the spatial relations between image pixels into consideration, uses direct linear discriminant analysis to replace multi-dimension analysis and obtains higher recognition rates in the experiments of face recognition.
Owner:SHANGHAI JIAO TONG UNIV

Indoor positioning method based on Wi-Fi fingerprints and multi-dimensional scaling analysis

The invention provides an indoor positioning method based on Wi-Fi fingerprints and multi-dimensional scaling analysis. In the method, acquisition of user's behaviors and Wi-Fi signals is performed with crowdsourcing thoughts to replace the present site investigation based on the fingerprint method; a fingerprint model identifies position information of each Wi-Fi signal on a user track, distributes the position information to the corresponding position and acquires fingerprint information of each sampling point; the standard K-near neighbor algorithm is improved and different weights are distributed to each wireless access point, so that the positioning of room stage can be realized; in order to obtain users' absolute coordinate positions and describe user's walking tracks in a room, the multi-dimensional scaling analysis method is improved; the results of the multi-dimensional scaling analysis method is further corrected by using the corner of a corridor and the door of the room as the key points, so that the user's more accurate absolute coordinate positions can be obtained. According to the indoor positioning method based on Wi-Fi fingerprints and multi-dimensional scaling analysis, the site investigation stage is omitted and the indoor positioning precision is improved.
Owner:常州唯实智能物联创新中心有限公司

Self-localization method of sensor network node based on smartphone

The invention discloses a self-localization method of a sensor network node based on a smartphone. The method uses a general smartphone to replace a custom hardware module to be used as a network node, a plurality of mobile phone nodes orderly transmit linear frequency modulation (LFM) sound signals of 2k-6kHz by means of a loudspeaker and a microphone, and meanwhile, different mobile phone nodes sample the linear frequency modulation sound signals at a fixed frequency (44.1 kHz). Detection is performed on a sampling waveform by means of a generalized correlation method, and in view of a multipath effect, the self-localization method of the sensor network node based on the smartphone provided by the invention adopts a method of combining a threshold value method and time-frequency analysis to effectively inhibit the multipath effect, so that the arrival time of the linear frequency modulation sound signals can be obtained, then distance information between different nodes can be obtained, and finally, the unknown nodes can be located by adopting a multidimensional scaling (MDS) algorithm. The method of the invention does not need clock synchronization between the mobile phone nodes, and since the frequency is fixed, the arrival time of the sound signals can be accurately estimated through a sampling number; besides, the location accuracy is high, the cost is low, the networking is convenient and the prospect is wide.
Owner:ZHEJIANG UNIV

Method for identifying physical faults and information faults of power distribution network

The invention proposes a method for identifying physical faults and information faults of a distribution network. The basic idea of ​​the present invention is to preprocess and fuse the data uploaded by the intelligent terminal in the distribution network to establish a high-dimensional space-time state monitoring matrix, and after the matrix is ​​subjected to multi-dimensional scale analysis and dimensionality reduction, outlier detection is performed on it. Obtain the LOF value of each node, on this basis, the detection of faults in the smart distribution network can be realized, and then according to the LOF value of the generalized nodes, it can be identified whether the fault is a power fault in the distribution network or a communication node fault; further, combined with multi-dimensional scale The analysis and visualization results of outlier detection enable the location of distribution network fault areas and fault communication nodes. The invention can not only effectively detect the fault of the intelligent distribution network, but also locate the fault area and the fault communication node of the distribution network.
Owner:HUNAN UNIV

Hydraulic pump fault diagnosis method based on local mean conversion and Softmax

The invention relates to a hydraulic pump fault diagnosis method based on local mean conversion and Softmax. Through analyzing vibration signals collected from a hydraulic pump, the real-time state of the hydraulic pump can be obtained. According to the method, firstly, LMD (local mean decomposition) is used for decomposing the vibration signals into a plurality of PF (product function) components; then, the PF components including fault information are analyzed; feature parameters such as energy and corresponding time domain statistics are extracted; then, MDS (multi-dimension scaling) is used for carrying out feature reduction; after the reduced features are obtained, a trained logistic model is used for carrying out health evaluation on the hydraulic pump; in the health evaluation process of the hydraulic pump, if the fault occurrence is detected, a trained Softmax regression model can diagnose a possible fault mode. The hydraulic pump fault diagnosis method has the advantages that the health state of the hydraulic pump can be effectively evaluated, and the fault diagnosis can be carried out.
Owner:北京恒兴易康科技有限公司

Indoor corner landmark matching and identification method based on crowdsourcing trajectories

The invention discloses an indoor corner landmark matching and identification method based on crowdsourcing trajectories. The method comprises the steps that landmark two-dimensional coordinate information of an indoor layout map is obtained; N signal sources are arranged in a target zone so that a user terminal can acquire signals of at least one signal source; marked and non-marked trajectories are acquired and are divided into trajectory windows; targeted characteristics are extracted from the marked trajectory windows, and a posture group identification classifier and a corner identification classifier are trained; the trained classifiers are utilized to identify corner landmarks of the non-marked trajectories, and RSS data of positive windows in the windows is extracted; a multidimensional scale analysis algorithm is utilized to reduce dimensionality so as to reach multiple dimensions, and clustering and matching are performed respectively; a voting algorithm is adopted to make effective sampling values correspond to certain corners according to clustering and matching results under multiple dimensions, and invalid sampling values are filtered; corner landmark fingerprints are generated according to the matching results. Compared with existing corner landmark identification method, the identification performance is improved.
Owner:HUAZHONG UNIV OF SCI & TECH

Method for classifying, optimizing and analyzing website based on user mental model

The invention discloses a method for classifying, optimizing and analyzing a website based on a user mental model. The method comprises the following steps of: firstly preprocessing log data of the website, wherein the log data contains the data relative to a concept of optimizing of a website classified catalogue issued by a user based on cognition of the user on the website classified catalogue, and extracting the concept from the log data by preprocessing; then determining a co-occurrence relation between the concept issued by the user and the concept in the website classified catalogue by a user mental model classification theory, wherein the concept presents a specific name of the website classified catalogue, such as books and daily articles; converting the co-occurrence relation into a co-occurrence matrix; converting the co-occurrence matrix into a similarity matrix by virtue of a pearson coefficient algorithm; and finally carrying out clustering analysis and multi-dimensional dimensional analysis to analyze similarity and spatiality among concepts of the cognition of the user on the website classified catalogue. Due to the adoption of six steps, decision supports can be provided to the optimizing of the website classified catalogue from a quantified angle based on the user mental model of the website.
Owner:NANJING UNIV OF SCI & TECH

Method for evaluating water quality by using microbial diversity indicators in water sediments

The present invention relates to a method for evaluating water quality by using microbial diversity indicators in water sediments. According to the method, the structure of microbiological community in sediments is determined by using the Miseq high throughput sequencing, the relationship between the microorganism and the living environment is researched by using such statistic methods as principal component analysis, and non metric multidimensional scaling analysis, and the PA and BGN are calculated, wherein beta evaluates microbial indicators to determine the water eutrophication level and pollution level. According to the present invention, the microbial community characteristics of different types of water sediments in different pollution types can be objectively and comprehensively obtained by using the high throughput sequencing technology, water bodies and water qualities are evaluated integrally, and the selected microbial evaluation indicators can sensitively reflect the change of the water quality and the adaptability is wide, which can accurately detect all types of water sediments.
Owner:SHANGHAI UNIV

Method for building models in non-stationary manner on basis of anisotropy

InactiveCN106227929AReproduce non-stationary featuresImage analysisCharacter and pattern recognitionRose diagramMulti dimensional
The invention discloses a method for building models in a non-stationary manner on the basis of anisotropy. The method has the advantages that local anisotropy of training images is quantitatively represented by rose diagrams of range combinations of different directional variation functions, the method is combined with classic multi-dimensional scale analysis and K-means cluster analysis, accordingly, the non-stationary training images can be automatically segmented, various sub-regions are independent from one another, the insides of segments are simulated by the aid of the traditional stationery multi-point model building algorithms, and the models can be ultimately built in the non-stationary manner; multi-point geologic statistic model building can be effectively carried out by the aid of the non-stationary training images as compared with SIMPAT algorithms.
Owner:YANGTZE UNIVERSITY

Asphalt brand identification method

The invention provides an asphalt brand identification method. The method comprises the steps that on the basis of a Fourier transform attenuated total reflection infrared spectroscopy and multidimensional scaling analysis method, in combination with multiple infrared spectroscopy data preprocessing methods such as wavelength selection, background removal, base line correction, primary logarithm unit variance processing, abnormal data identification and removal, secondary logarithm processing, matrix asphalt purchased from different factories can be classified and identified, and a regressionmodel is built and can be used for identifying unknown asphalt samples to determine the brands of the unknown asphalt samples. The asphalt brand identification method is simple, rapid, accurate and effective, and can be used for detecting and evaluating the quality stability of the matrix asphalt of the same brand and can be used for on-site online asphalt detection and identification.
Owner:CHANGAN UNIV

RSS data flatting method based on multi-dimension analysis algorithm

ActiveCN106358233ASmooth realizationCancel noiseNetwork topologiesData spaceRadio map
The invention provides a RSS data flatting method based on a multi-dimension analysis algorithm, which aims at solving the defects of reducing Radio Map precision and locating precision greatly caused by the reduced RSS data collection, environment noise and increased influence of the collection error on Radio Map in the prior art. The specific process is as follows: 1. arranging m AP in the indoor area to be located, 2. obtaining similarity distance dik and djk, 3. obtaining similarity matrix among different RP, 4. obtaining the similarity distance of noise RP and other RP, replacing the corresponding value in the similarity matrix on the data space in step 3, 5. calculating and obtaining RSS', replacing RSS in step 1; and 6, repeating step 4 and step 5 to realize flatting the RSS data. The flatting method provided in the invention is used for locating indoor area.
Owner:黑龙江省工研院资产经营管理有限公司

Competitive sports teamwork mode analogy method based on chordal graph visualization

The invention discloses a competitive sports teamwork mode analogy method based on chordal graph visualization. The method comprises the following steps: 1) establishing a foundation database of game related information; 2) constructing a chordal graph according to the assisting information of players in a single game live broadcast record, i.e. dividing each player into a scoring sector and an assisting sector, respectively representing a scoring record and an assisting frequency record of each player, connecting the corresponding assisting sectors and scoring sectors of both cooperated parties by a chord so as to obtain a detail record of a game; 3) clustering the players with a multidimensional scaling method according to the historical record data of mutual assisting information of players in a team to obtain the two-dimensional coordinates of m vectors so as to obtain the clustering information of m players. Compared with the prior art, the competitive sports teamwork mode analogy method has the characteristics that chordal graph visualization design is adopted so as to bring convenience for users to better know and analyze game score distribution and player cooperation situations.
Owner:TIANJIN UNIV

Object source analysis method based on measured Dpar value

PendingCN114813728AAccurate and reliable analysisPrecise delineationWeather/light/corrosion resistancePreparing sample for investigationNeutron irradiationNuclear reactor
The invention provides a material source analysis method based on measurement of a Dpar value. The method comprises the following steps: measuring fission track Dpar values of samples in a deposition area and a source area; then grouping the obtained Dpar values by adopting a multi-dimensional scaling analysis method to obtain grouped data, and constructing a sedimentary area-source area coupling model by taking the Dpar values as parameters and matching the grouped data with the same Dpar value characteristics of the sedimentary area and the source area, so that the object source area and the rock type thereof can be accurately delineated, the sediment source can be determined, and the object source analysis is more accurate and credible. According to the material source analysis method, the material source analysis result can be accurately obtained only by measuring the Dpar value of the sample, thermal neutron irradiation does not need to be carried out on the sample in the Dpar value measuring process, and the time consumption for obtaining the Dpar value is short; the defect that in the traditional material source analysis process of measuring the fission track age, an analysis sample needs to be sent to an atomic nuclear reactor for thermal neutron irradiation or the irradiation time is long, and radioactivity exists is effectively overcome.
Owner:CHINA UNIV OF GEOSCIENCES (WUHAN)

Virtual sample generation method based on interpolation algorithm

The invention discloses a virtual sample generation method based on an interpolation algorithm, which expands the sample size under the condition of unbalanced and incomplete samples and improves thesoft measurement modeling precision of a purified terephthalic acid production device. According to the invention, the projection of a high-dimensional original sample in a low-dimensional space is obtained by using a multi-dimensional scale analysis algorithm, a virtual sample is generated in a sample sparse region according to an interpolation algorithm, and finally, the value of the virtual sample in the original sample space is obtained by constructing an extreme learning machine neural network, so the virtual sample generation method is formed. According to the invention, the neural network is trained by expanding the sample set, and the precision and stability of the soft measurement model can be improved. The virtual sample generation method based on the interpolation algorithm is easy to use and obvious in effect, has excellent generalization performance and good stability, and can be widely applied to small sample modeling in the chemical production process.
Owner:BEIJING UNIV OF CHEM TECH

Fault data processing method and system and fault prediction method

The invention provides a fault data processing method and system and a fault prediction method, which are applied to a rolling bearing, and the fault data processing method comprises the following steps: collecting time domain vibration signals of the rolling bearing under different fault conditions; for the time domain vibration signal under each fault condition, carrying out variational mode decomposition on the time domain vibration signal to obtain a plurality of two-dimensional images; according to the two-dimensional image, using a histogram of oriented gradient algorithm to extract and obtain corresponding image features; and carrying out dimension reduction processing on the image features by adopting a multi-dimensional scaling analysis algorithm, and carrying out processing to obtain fault data corresponding to the current fault condition. According to the method, the collected time domain vibration signals are converted into the digital images, the intuition is high, the fault detection problem is converted into the image recognition method, the traditional characteristic parameter operation process is converted into the gray value operation process of the gray image, the characteristic operation time is greatly shortened, and the processing process is simplified.
Owner:HEFEI UNIV OF TECH

Transformer oil dielectric loss regression prediction method based on multi-frequency ultrasonic detection

PendingCN113591363ASolve the large and complexSolve the complex composition and cumbersome operationDesign optimisation/simulationNeural learning methodsBackpropagation neural netsGlobal optimal
The invention relates to a transformer oil dielectric loss regression prediction method based on multi-frequency ultrasonic detection, and belongs to the technical field of transformer detection. The method comprises the following steps: S1, carrying out multi-frequency ultrasonic detection; S2, performing multi-dimensional scale analysis (MDS); S3, establishing a back propagation neural network (BPNN); S4, obtaining a global optimal solution by using a particle swarm optimization (PSO) algorithm; and S5, establishing a transformer oil dielectric loss prediction model based on the MDS-PSO-BPNN. According to the invention, the relationship between the ultrasonic characteristic value and the transformer oil dielectric loss is established, so that the transformer fault can be detected by multi-frequency ultrasonic waves, the problems of huge and complex structure and tedious operation of a traditional detection system are solved, and the operation state of the transformer oil can be circularly monitored on line.
Owner:云南电网有限责任公司保山供电局

A primary and secondary education knowledge map analysis system based on co-word and co-citation analysis

The invention belongs to the technical field of primary and middle school education knowledge map analysis, in particular to a primary and secondary education knowledge map analysis system based on co-word and co-citation analysis, to determine the typical primary and secondary education knowledge publications related to knowledge map, the authors of the downloaded typical primary and middle school education knowledge journals are analyzed by co-citation and a co-citation matrix is generated, the co-citation matrix of the journal is analyzed in multi-dimension scale, After clustering analysisand factor analysis, the main academic knowledge and the knowledge map of the hot spots in primary and secondary education are drawn, As that prior art exist, the invention solves the problem that theprior art exists in order to better understand the research hotspot situation of the current domestic and foreign academic circles in the field of primary and secondary education, In order to providereference for the development of teacher education in primary and secondary schools in China, the paper reveals the three major academic groups in this field and their concerns, educational academichot spots and their research groups are very easy to judge the beneficial technical effects.
Owner:SHENYANG NORMAL UNIV

Three-dimensional geologic structure model random generation and uncertainty analysis method

The invention relates to the field of geological informatization, discloses a three-dimensional geological structure model random generation and uncertainty analysis method, and solves the problems that a traditional uncertainty analysis scheme of three-dimensional geological modeling cannot fully reflect three-dimensional morphological characteristics and a single model cannot perfectly reflect the real appearance of an underground space. According to the method, after a geological model is constructed according to geological exploration data, a random model conforming to pre-specified error distribution characteristics is generated based on Monte Carlo simulation, dimension reduction processing is performed on the generated model based on a multi-dimensional scale analysis method, all the models are mapped into a point set in a three-dimensional space, and through the relative position relation between points in the point set, the geological exploration data is obtained. And comparative analysis and visual analysis of model differences are realized. The method is suitable for uncertainty analysis of the three-dimensional geological model.
Owner:SICHUAN DEPT OF TRANSPORTATION HIGHWAY PLANNING PROSPECTING & DESIGN RES INST +1

System And Method For Developing Strategic Scenario

Provided are a system and method for developing a strategic scenario. The system includes: a region analyzer for receiving initial scenario regions and sub-regions, verifying an organic relationships therebetween by performing a systematic thinking, calculating metric points of factors by performing an influencing matrix analysis, calculating a dynamic index for the factors based on the calculated metric points and classifying the factors into factor groups; a scenario diagnosis unit for selecting major factors based on the dynamic index and creating a projection catalogue of the selected major factors; a scenario developer for performing a comparability analysis between future prospects of selected major factors, performing a projection bundle extracting analysis based on the metric results from the comparability analysis, and deciding a final scenario by performing a cluster and a multidimensional scaling analysis; and a database for storing data generated from the region analyzer, the scenario diagnosis and the scenario developer.
Owner:KT CORP +1

Product competition relation visual analysis method, device and equipment

PendingCN110659924AEasy to analyze and useCompetitive relationships are accurate and effectiveMarketingManufacturing computing systemsGraphicsDistance matrix
The invention discloses a product competition relation visual analysis method, device and equipment, and relates to the technical field of computers. The method comprises the steps of obtaining high-dimensional product coordinates and high-dimensional audience user attribute coordinates through a corresponding analysis method according to a preset audience user obtaining strategy of a product andpreset audience user attributes; based on the high-dimensional product coordinates and the high-dimensional audience user attribute coordinates, calculating a distance matrix of each product and eachattribute by adopting an Euclidean distance; carrying out smoothing processing on the distance matrix; performing dimensionality reduction mapping on the smoothed distance matrix into a coordinate matrix in a two-dimensional space by adopting a multi-dimensional scale analysis method; and drawing coordinate points corresponding to the coordinate matrix in a two-dimensional space coordinate graph,and displaying a competitive relationship between products. The technical problem that the coordinate points are excessively concentrated or scattered, and consequently graph display is disordered issolved. The beneficial effects of accurately and effectively displaying the competitive relationship between the products and facilitating the analysis and use of advertisers are achieved.
Owner:BEIJING QIHOO TECH CO LTD

Latent class multi-dimensional scale analysis-based sound quality modeling method

The invention provides a latent class multi-dimensional scale analysis-based sound quality modeling method. A tone color space is established by utilizing a CLASCAL method proposed by Winsberg; dimensions are fitted through multivariate regression analysis; objective variables capable of explaining the dimensions serve as inputs of a neural network; and a sound quality model is built. According tothe method, a standard of objective parameter selection is provided; the precision and explainability of the sound quality model are improved; and two key problems of explainability and nonlinearityin sound quality modeling are better solved.
Owner:NORTHWESTERN POLYTECHNICAL UNIV

An MDS-based prediction model of RBF for petrochemical industry production capacity

The invention discloses an MDS-based prediction model of RBF for petrochemical industry production capacity. The model comprises the following steps: obtaining ethylene data; Carrying out dimension reduction processing on the ethylene data by using a multi-dimensional scale analysis algorithm, so that the distance of the ethylene data in a low-dimensional space is the same as the distance of the ethylene data in a high-dimensional space; Obtaining a corresponding category in the low-dimensional space as a training set and a test set of a radial basis function neural network; Forming a radial basis function neural network prediction model according to the training set and the test set; And predicting the ethylene yield according to the primary function neural network prediction model. According to the technical scheme provided by the invention, the prediction precision of the ethylene production energy efficiency is improved, so that the effective prediction of the energy efficiency ofthe petrochemical industry is realized, the inaccuracy of a traditional neural network model on the prediction of the energy efficiency of the petrochemical industry is solved, the energy efficiency of the complex petrochemical industry is improved, and the purposes of energy conservation and emission reduction are realized.
Owner:BEIJING UNIV OF CHEM TECH

A Website Classification Optimization Analysis Method Based on User Mental Model

The invention discloses a method for classifying, optimizing and analyzing a website based on a user mental model. The method comprises the following steps of: firstly preprocessing log data of the website, wherein the log data contains the data relative to a concept of optimizing of a website classified catalogue issued by a user based on cognition of the user on the website classified catalogue, and extracting the concept from the log data by preprocessing; then determining a co-occurrence relation between the concept issued by the user and the concept in the website classified catalogue by a user mental model classification theory, wherein the concept presents a specific name of the website classified catalogue, such as books and daily articles; converting the co-occurrence relation into a co-occurrence matrix; converting the co-occurrence matrix into a similarity matrix by virtue of a pearson coefficient algorithm; and finally carrying out clustering analysis and multi-dimensional dimensional analysis to analyze similarity and spatiality among concepts of the cognition of the user on the website classified catalogue. Due to the adoption of six steps, decision supports can be provided to the optimizing of the website classified catalogue from a quantified angle based on the user mental model of the website.
Owner:NANJING UNIV OF SCI & TECH

A self-location method for sensor network nodes based on smart phones

The invention discloses a self-localization method of a sensor network node based on a smartphone. The method uses a general smartphone to replace a custom hardware module to be used as a network node, a plurality of mobile phone nodes orderly transmit linear frequency modulation (LFM) sound signals of 2k-6kHz by means of a loudspeaker and a microphone, and meanwhile, different mobile phone nodes sample the linear frequency modulation sound signals at a fixed frequency (44.1 kHz). Detection is performed on a sampling waveform by means of a generalized correlation method, and in view of a multipath effect, the self-localization method of the sensor network node based on the smartphone provided by the invention adopts a method of combining a threshold value method and time-frequency analysis to effectively inhibit the multipath effect, so that the arrival time of the linear frequency modulation sound signals can be obtained, then distance information between different nodes can be obtained, and finally, the unknown nodes can be located by adopting a multidimensional scaling (MDS) algorithm. The method of the invention does not need clock synchronization between the mobile phone nodes, and since the frequency is fixed, the arrival time of the sound signals can be accurately estimated through a sampling number; besides, the location accuracy is high, the cost is low, the networking is convenient and the prospect is wide.
Owner:ZHEJIANG UNIV

Construction and positioning method of indoor wlan signal plan based on multi-dimensional scale mds analysis

The invention discloses an indoor WLAN signal plan mapping and positioning method based on multidimensional scaling analysis. The method comprises the following steps of observing the motion path mode of a user in a target area in an off-line stage and acquiring a signal sequence according to the observed motion path mode; using an MDS method to perform dimension reduction on the acquired signal sequence and drawing signal plans corresponding to each path mode; converting the signal plans into gray scale images and performing feature extraction and nerve network training; and in a positioning stage, converting a newly acquired signal sequence into gray scale images and further performing feature extraction, performing mode discrimination on the newly acquired signal sequence by using the nerve network acquired through training and further acquiring a user motion curve and direction by estimating. The method can be applied to a radio communication network environment. The method which is mainly used for indoor wireless local area network positioning solves the problem in a conventional fingerprint positioning method that great manpower and material resources are required for investment.
Owner:CHONGQING UNIV OF POSTS & TELECOMM

Track multiscale analysis method used for protein structure prediction

The invention discloses a track multiscale analysis method used for protein structure prediction. A binary association graph is adopted for representing global folding information of protein conformations; structure difference among different conformations is represented with a Hamming distance; by constructing a global difference information matrix of a search track, the difference information matrix is converted into a two-dimensional plane structure difference information graph by adopting a multidimensional scale analysis method; and through the plane structure difference information graph, a structure relationship of all the conformations in a search process can be obtained, and tracking and viewing of the search track are realized. The method is applied to the protein structure prediction; and by analyzing the search track, tiny structure difference can be accurately captured and information of structural composition modes such as a folding type, a contact mode and the like can be displayed.
Owner:ZHEJIANG UNIV OF TECH
Who we serve
  • R&D Engineer
  • R&D Manager
  • IP Professional
Why Patsnap Eureka
  • Industry Leading Data Capabilities
  • Powerful AI technology
  • Patent DNA Extraction
Social media
Patsnap Eureka Blog
Learn More
PatSnap group products