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Extended virtual in-situ calibration method in building systems using Bayesian inference

机译:贝叶斯推理的建筑系统扩展虚拟现场校准方法

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Measurements from sensors and knowledge of key parameters are of great importance in the operation of modern building systems. Accurate and reliable information as these serves as the base for ensuring the desired performance of control algorithms, fault detection and diagnostics rules, analytical optimization strategies. They are also crucial for developing trust-worthy building models. However, unlike mass produced industrial devices, building systems are generally one of a kind and sparsely instrumented. Despite the indispensable need, dense deployment of sensors or a periodic manual calibration for ensuring the quality of thousands variables in building systems is not practical. To address the challenge, we extend our virtual in-situ calibration method by marrying it with Bayesian inference, which has a better capability in handling uncertainties. Strategies, including local, global, and combined calibration, are evaluated in a case with various sensor errors and uncertain parameters. The detailed procedure and results are presented. (C) 2016 Elsevier B.V. All rights reserved.
机译:传感器的测量和关键参数的知识在现代建筑系统的运行中非常重要。准确而可靠的信息是确保控制算法,故障检测和诊断规则,分析优化策略的理想性能的基础。它们对于开发值得信赖的构建模型也至关重要。但是,与大规模生产的工业设备不同,建筑系统通常是其中一种且仪器稀疏。尽管有必不可少的需求,但为了确保建筑系统中数千个变量的质量,密集部署传感器或进行定期手动校准并不现实。为了应对这一挑战,我们将其虚拟原位校准方法与贝叶斯推理相结合,从而扩展了其在不确定性方面的能力。在各种传感器错误和不确定参数的情况下,将评估包括局部,全局和组合校准在内的策略。介绍了详细的过程和结果。 (C)2016 Elsevier B.V.保留所有权利。

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