EQUIPMENT PRICE FORECAST BASED ON T-S FUZZY NEURAL NETWORK
DOI:
https://doi.org/10.52292/j.laar.2018.245Keywords:
T-S fuzzy neural network, equipment, price forecastAbstract
As we all know, the factors affecting the price of equipment are more complicated, but these factors still have a great correlation. How can we accurately predict the price of equipment? Based on the study of the tight support and smoothness of wavelet function, this paper proposes a correlation variable weight wavelet neural network algorithm to predict the price of 162 devices. The test results show that if the weight is not reduced, the predicted price is 0, and the error is still large. However, by arranging the data from small to large, the variable weighted wavelet neural network algorithm is used to predict the result closer to the auction price, which overcomes the incompatibility of the algorithm iteration and provides a reference for accurately predicting the price of the device.
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