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Neural Variational Identification and Filtering for Stochastic Non-linear Dynamical Systems with Application to Non-intrusive Load Monitoring

机译:随机非线性动力系统的神经变分辨识和滤波及其在非侵入式负荷监测中的应用

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In this paper, an algorithm for performing System Identification and inference of the filtering recursion for stochastic non-linear dynamical systems is introduced. Additionally, the algorithm allows for enforcing domain-constraints of the state variable. The algorithm makes use of an approximate inference technique called Variational Inference in conjunction with Deep Neural Networks as the optimization engine. Although general in its nature, the algorithm is evaluated in the context of Non-Intrusive Load Monitoring, the problem of inferring the operational state of individual electrical appliances given aggregate measurements of electrical power collected in a home.
机译:本文介绍了一种对随机非线性动力系统进行系统辨识和滤波递归推理的算法。另外,该算法允许强制执行状态变量的域约束。该算法将称为变分推理的近似推理技术与深度神经网络结合使用,作为优化引擎。尽管从本质上讲是通用的,但是该算法是在非侵入式负载监视的背景下进行评估的,该问题是在汇总收集的家庭电能的情况下推断单个电器的运行状态的问题。

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