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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Sliding-window neural state estimation in a power plant heater line
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Sliding-window neural state estimation in a power plant heater line

机译:电厂加热器管线中的滑动窗口神经状态估计

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摘要

The state estimation problem for a section of a real power plant is addressed by means of a recently proposed sliding-window neural state estimator. The complexity and the nonlinearity of the considered application prevent us from successfully using standard techniques as Kalman filtering. The statistics of the distribution of the initial state and of noises are assumed to be unknown and the estimator is designed by minimizing a given generalized least-squares cost function. The following approximations are enforced; (i) the state estimator is a finite-memory one, (ii), the estimation functions are given fixed structures in which a certain number of parameters have to be optimized (multilayer feedforward neural networks are chosen from among various possible nonlinear approximators), (iii) the algorithms for optimizing the parameters (i.e., the network weights) rely on a stochastic approximation. Extensive simulation results on a complex model of a part of a real power plant are reported to compare the behaviour of the proposed estimator with the extended Kalman filter.
机译:借助于最近提出的滑动窗口神经状态估计器,解决了真实发电厂的一部分的状态估计问题。所考虑的应用程序的复杂性和非线性使我们无法成功地将标准技术用作卡尔曼滤波。假定初始状态和噪声分布的统计信息未知,并且通过最小化给定的广义最小二乘成本函数来设计估算器。强制采用以下近似值; (i)状态估计器是一个有限存储器,(ii),估计函数具有固定的结构,其中必须优化某些参数(从各种可能的非线性近似器中选择多层前馈神经网络), (iii)用于优化参数(即网络权重)的算法依赖于随机逼近。据报道,在真实发电厂的一部分的复杂模型上有广泛的仿真结果,用于比较所提出的估算器与扩展卡尔曼滤波器的行为。

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