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
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