학술논문

Machine Learning for Digital Twins to Predict Responsiveness of Cyber-Physical Energy Systems
Document Type
Conference
Source
2020 8th Workshop on Modeling and Simulation of Cyber-Physical Energy Systems Modeling and Simulation of Cyber-Physical Energy Systems (MSCPES), 2020 8th Workshop. :1-6 Apr, 2020
Subject
Computing and Processing
Power, Energy and Industry Applications
Measurement
Convolution
Digital twin
Conferences
Ecosystems
Neural networks
Machine learning
Machine Learning
Digital Twin
Cyber-Physical Energy System
Temporal Convolution Neural Network
Language
Abstract
Cyber-Physical Systems are becoming more autonomous, interconnected, complex and adaptive, and are expected to operate in highly dynamic environments. This is especially challenging for energy ecosystems that are increasingly difficult to control and maintain as the number of participating manufacturers and users grows. Digital Twins help analyze and predict these systems in the form of digital reflections that operate in parallel with the physical system. In this paper, we use Machine Learning to improve the predictive power of Digital Twins for Cyber-Physical Energy Systems. Specifically, we use a Temporal Convolutional Neural Network model to learn the temporal patterns in the system and predict its responsiveness to specific power setpoint instructions. Real-life data from ten batteries were used to predict the behavior over time. Compared to the baseline model that uses the prior probability of response and the average response rate within the configured time window, the model predicts the batteries’ responsiveness more accurately. The more temporal information is used as input for prediction, the better the model performs in both precision and recall. The results show that this compensates for the lack of information when fewer metrics are used. The use of Machine Learning for Digital Twins can help maintain a heterogeneous energy ecosystem, while minimizing the need to acquire or disclose detailed information.