Electrical equipment temperature real-time early-warning method based on abnormal factor extraction
A technology of electrical equipment and abnormal factors, applied in radiation pyrometry, alarms, measuring devices, etc., can solve problems affecting the reliability and robustness of real-time early warning methods, restricting the generalization ability of models, and restricting the promotion and use of models , to achieve the effects of simplified repetitive operations, fast running speed and simple algorithm
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Embodiment 1
[0046] Such as figure 1 As shown, a real-time early warning method for electrical equipment temperature based on abnormal factor extraction includes the following steps:
[0047] S01, through the infrared sensor to collect a piece of temperature data of the actual operation of electrical equipment, the sampling interval is 5s, the collected results are as follows figure 2 shown;
[0048] S02, for the collected temperature data stream t i (i=0, 1, 2,...n) is preprocessed and sorted into form;
[0049] S03, for the dataset Each T in k , calculate its local outlier factor value L OF , when calculating the formula
[0050]
[0051] Among them, i is set to 10, the result is as follows image 3 As shown in the figure, each "*" represents a data point, and the radius of the circle surrounding the "*" represents the size of its local anomaly factor.
[0052] In this example, the L OF The preset threshold of is set to 3, and the final calculated local anomaly factor val...
Embodiment 2
[0054] S01, through the infrared sensor to collect a piece of temperature data of the actual operation of electrical equipment, the sampling interval is 5s, the results are as follows Figure 4 shown;
[0055] S02, for the collected temperature data stream t i (i=0, 1, 2,...n) is preprocessed and sorted into form;
[0056] S03, for the dataset Each T in k , calculate its local outlier factor value L OF , when calculating the formula
[0057]
[0058] Among them, i is set to 10, the result is as follows Figure 5 As shown, each "*" represents a data point, and the radius of the circle surrounding the "*" represents the size of its local anomaly factor. Also put L OF The preset threshold value of is set to 3, and among the local anomaly factor values calculated in this embodiment, there is a L OF =3.3799 is greater than the preset value, so it is considered that the equipment may have a slight abnormality during operation, and it will be marked in the temperature...
Embodiment 3
[0060] S01, through the infrared sensor to collect a piece of temperature data of the actual operation of electrical equipment, the sampling interval is 5s, the results are as follows Figure 7 shown;
[0061] S02, for the collected temperature data stream t i (i=0, 1, 2,...n) is preprocessed and sorted into form;
[0062] S03, for the dataset Each T in k , calculate its local outlier factor value L OF , when calculating the formula
[0063]
[0064] Among them, i is set to 10, the result is as follows Figure 8 As shown, each "*" represents a data point, and the radius of the circle surrounding the "*" represents the size of its local anomaly factor. Also put L OF The preset threshold value of is set to 3. Among the local anomaly factor values calculated in this example, there are 5 L OF The value is greater than the preset value, so it is considered that the equipment may be abnormal during operation, and it will be marked in the temperature change diagram, s...
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