PINN-DT: Optimizing Energy Consumption in Smart Building Using Hybrid Physics-Informed Neural Networks and Digital Twin Framework with Blockchain Security.

IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL
Sensors Pub Date : 2025-10-09 DOI:10.3390/s25196242
Hajar Kazemi Naeini, Roya Shomali, Abolhassan Pishahang, Hamidreza Hasanzadeh, Saeed Asadi, Ahmad Gholizadeh Lonbar
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引用次数: 0

Abstract

The advancement of smart grid technologies necessitates the integration of cutting-edge computational methods to enhance predictive energy optimization. This study proposes a multi-faceted approach by incorporating (1) Deep Reinforcement Learning (DRL) agents trained using data from digital twins (DTs) to optimize energy consumption in real time, (2) Physics-Informed Neural Networks (PINNs) to seamlessly embed physical laws within the optimization process, ensuring model accuracy and interpretability, and (3) blockchain (BC) technology to facilitate secure and transparent communication across the smart grid infrastructure. The model was trained and validated using comprehensive datasets, including smart meter energy consumption data, renewable energy outputs, dynamic pricing, and user preferences collected from IoT devices. The proposed framework achieved superior predictive performance with a Mean Absolute Error (MAE) of 0.237 kWh, Root Mean Square Error (RMSE) of 0.298 kWh, and an R-squared (R2) value of 0.978, indicating a 97.8% explanation of data variance. Classification metrics further demonstrated the model's robustness, achieving 97.7% accuracy, 97.8% precision, 97.6% recall, and an F1 Score of 97.7%. Comparative analysis with traditional models like Linear Regression, Random Forest, SVM, LSTM, and XGBoost revealed the superior accuracy and real-time adaptability of the proposed method. In addition to enhancing energy efficiency, the model reduced energy costs by 35%, maintained a 96% user comfort index, and increased renewable energy utilization to 40%. This study demonstrates the transformative potential of integrating PINNs, DT, and blockchain technologies to optimize energy consumption in smart grids, paving the way for sustainable, secure, and efficient energy management systems.

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pin - dt:利用混合物理信息神经网络和带区块链安全的数字孪生框架优化智能建筑能耗。
智能电网技术的发展要求集成先进的计算方法来增强预测能源优化。本研究提出了一种多方面的方法,通过结合(1)使用数字双胞胎(dt)数据训练的深度强化学习(DRL)代理来实时优化能耗,(2)物理信息神经网络(pinn)在优化过程中无缝嵌入物理定律,确保模型的准确性和可解释性,以及(3)区块链(BC)技术来促进智能电网基础设施之间安全和透明的通信。该模型使用综合数据集进行训练和验证,包括从物联网设备收集的智能电表能耗数据、可再生能源输出、动态定价和用户偏好。该框架的平均绝对误差(MAE)为0.237 kWh,均方根误差(RMSE)为0.298 kWh, r平方(R2)值为0.978,表明数据方差的解释率为97.8%。分类指标进一步证明了模型的稳健性,准确率达到97.7%,精密度达到97.8%,召回率达到97.6%,F1得分达到97.7%。通过与线性回归、随机森林、支持向量机、LSTM、XGBoost等传统模型的对比分析,表明该方法具有较好的准确性和实时性。除了提高能源效率外,该模型还降低了35%的能源成本,保持了96%的用户舒适度,并将可再生能源利用率提高到40%。这项研究展示了整合pin、DT和区块链技术优化智能电网能源消耗的变革潜力,为可持续、安全和高效的能源管理系统铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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