Affiliation:
1. Shijiazhuang Institute of Railway Technology, Shijiazhuang, Hebei, China
Abstract
Accurate heat load prediction is the key to achieve fine control, energy
conservation, and carbon reduction of regional hydronics. Taking the
regional hydronics of a city in the north of China as the research object,
the author, respectively uses back propagation neural network (BPNN),
genetic algorithm (GA) optimized BPNN (GA-BPNN), and autoregressive
integrated moving average model (ARI?MA) combined BPNN (ARIMA BPNN) to
predict its heat load, and compares the accuracy and applicability of each
prediction method. The results indicate that GA-BPNN has the smallest
prediction error, followed by ARIMA-BPNN, but the latter requires less data
for prediction. In practical engineering, if there is a sufficient amount
of data related to heat load, it is recommended to use GA-BPNN. If there is
a small amount of data, ARIMA-BP prediction method can be used.
Publisher
National Library of Serbia