CH-24-C063 - Fault Diagnosis of Chillers using Dimensionality Reduction Methods PDF

CH-24-C063 - Fault Diagnosis of Chillers using Dimensionality Reduction Methods PDF

Name:
CH-24-C063 - Fault Diagnosis of Chillers using Dimensionality Reduction Methods PDF

Published Date:
2024

Status:
Active

Description:

Publisher:
ASHRAE

Document status:
Active

Format:
Electronic (PDF)

Delivery time:
10 minutes

Delivery time (for Russian version):
200 business days

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Refrigeration systems, such as chillers, consist of interconnected mechanical components. These interdependent systems may have various faults that can be detected using comprehensive sensor measurements and system parameters. This study utilizes the benchmark chiller data collected by ASHRAE project 1043-rp and investigates machine learning and deep learning approaches for fault detection. Dimension reduction on this high dimensional data is investigated, and the compressed features are evaluated to classify various faults. Specifically, Principal Component Analysis (PCA) and Long Short-Term Memory Auto-Encoder (LSTM-AE) is applied as dimensionality reduction methods, and Support Vector Machine (SVM) and Neural Network (NN) are selected as classifiers. An LSTM model using the original data is used as a baseline. This study proposes a model architecture that enables combination of dimensionality reduction and classification choices.
File Size : 1 file , 4.3 MB
Note : This product is unavailable in Russia, Belarus
Number of Pages : 6
Product Code(s) : D-CH-24-C063
Published : 2024

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