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Lecturer (higher education)


Main Positions:电气工程及其自动化系副系主任;学院外事秘书;江苏省气象能源利用与控制工程技术研究中心秘书
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Education Level:With Certificate of Graduation for Doctorate Study
School/Department:School of Automation
Discipline:Control Theory and Engineering
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The Last Update Time: 2024.4.29

Current Position: Home >> Scientific Research >> Paper Publications

Fault Diagnosis of HVAC AHUs based on a BP-MTN Classifier

Hits: Praise

Impact Factor:7.093

DOI Number:10.1016/j.buildenv.2022.109779

Affiliation of Author(s):南京信息工程大学

Journal:Building and Environment

Funded by:National Natural Science Foundation of China No. 52077105;Six talent peaks pro. in JS GDZB-018

Key Words:Multi-dimensional Taylor network, BP algorithm, HVAC, AHU

Abstract:HVAC Air Conditioning Units (AHU) adjust and deliver air to rooms through fans and ducts to meet human comfort needs. Fault diagnosis of AHUs helps to reduce energy consumption and meet human comfort needs, and thus is significant. As a network, the Multi-dimensional Taylor Network (MTN) approximates a nonlinear function with a polynomial network. It is suitable for embedding in a control system since it has a much simpler structure than a neural network while having high accuracy. However, the traditional MTN is usually used for model fitting but not for classification. To solve this problem, a Back Propagation Multi-dimensional Taylor Network (BP-MTN) classifier is proposed in this paper to diagnose the faults of AHUs. This BP-MTN classifier has three main features: 1) a fully connected layer is added after the output layer of the traditional MTN to solve the mismatch between the dimensionality of fault features and the number of categories; 2) the softmax layer is added in the traditional MTN to realize the classification; 3) ReLU function is added in the traditional MTN to improve the classification accuracy and reduce the model complexity; 4) the Back-Propagation (BP) algorithm based on the small batch gradient descent algorithm is used to train the BP-MTN classifier rather than the nonlinear least square used in the traditional MTN. Additionally, this paper explores the selection of polynomial orders and activation functions of BP-MTN through extensive experiments. The experimental results show that the BP-MTN can achieve the accurate classification of AHU faults effectively.

All the Authors:Jun Cai,Yun Tang,Liang Chen

First Author:Ying Yan

Indexed by:Journal paper

Discipline:Engineering

Document Type:J

Page Number:1-24

ISSN No.:0360-1323

Translation or Not:no

Date of Publication:2022-11-19

Included Journals:SCI

Publication links:https://doi.org/10.1016/j.buildenv.2022.109779

 

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