Title of article :
COOLING LOAD PREDICTION IN A DISTRICT HEATING AND COOLING SYSTEM THROUGH SIMPLIFIED ROBUST FILTER AND MULTILAYERED NEURAL NETWORK
Author/Authors :
Sakawa، Masatoshi نويسنده , , Kato، Kosuke نويسنده , , Ushiro، Satoshi نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Pages :
-632
From page :
633
To page :
0
Abstract :
Cooling load is a heat value of cold water used for air conditioning in a district heating and cooling system. Cooling load prediction in a district heating and cooling system is one of the key techniques for smooth and economical operation. In this article, cooling load prediction in such a district heating and cooling system is considered. Unfortunately, since actual cooling load data usually involve measurement noises, outliers, and missing data for several reasons, a prediction method considering the effect of the outliers and missing data is desirable. In this article, a new prediction method using a simplified robust filter to improve a numerical stability problem of a robust filter and a three-layered neural network, is proposed. Applications of the proposed method and some other methods to actual cooling load data in a district heating and cooling system involving outliers and missing data show the usefulness of the proposed method.
Journal title :
Applied Artificial Intelligence
Serial Year :
2001
Journal title :
Applied Artificial Intelligence
Record number :
52000
Link To Document :
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