基于卡尔曼滤波的火电厂状态估计

Akhil Nair, T. Radhakrishnan, K. Srinivasan, S. Rominus Valsalam
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引用次数: 3

摘要

切向燃烧炉是一种涡流燃烧装置,广泛应用于火力发电厂的蒸汽发生器中。由于燃烧颗粒的复杂空气动力学、火焰稳定性和热气流在整个炉膛内的分布,对炉内气体温度进行完美的建模和仿真是相当困难的。炉气的温度取决于许多参数,如倾斜角(倾斜角),燃料质量,燃尽百分比和每个炉角的燃烧器流量。然而,在Neyveli褐煤公司(NLC)运营的现有炉中无法进行测量。因此,温度状态估计是过程安全经济运行的重要前提。它是过程监控、故障检测和诊断、过程优化和基于模型的控制等应用的组成部分。因为所有的过程变量通常都是不可测量的,所以可以设计一个观测器,通过利用相关的过程输入、输出和过程知识,以数学模型的形式对状态进行估计。目的是设计一个好的炉膛状态估计器。针对这一问题,提出了线性卡尔曼滤波(LKF)和扩展卡尔曼滤波(EKF)算法,并对仿真结果进行了比较。
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Kalman Filter Based State Estimation of a Thermal Power Plant
Tangentially-fired furnaces (TFF) are vortex-combustion units and are widely used in steam generators of thermal power plants. Perfect modeling and simulation of furnace gas temperature is quite difficult, due to its complex aerodynamics of burning particles, flame stability and hot gas flow distribution throughout the furnace. The temperature of the furnace gas depends on many parameters such as the inclination angle (tilt angle), fuel quality, burn out percentage and the flow rates in the burners for each of the furnace corners. However, the measurements are not available in the existing furnace operated at Neyveli Lignite Corporation (NLC), Neyveli. Thus, state estimation of temperature is an important prerequisite for safe and economical process operations. It is an integral part of applications such as process monitoring, fault detection and diagnosis, process optimization, and model-based control. Because all the process variables are generally not measured, an observer can be designed to generate an estimate of the state by making use of the relevant process inputs, outputs, and process knowledge, in the form of a mathematical model. The aim is to design a good state estimator for the furnace. Linear Kalman Filter (LKF) and Extended Kalman Filter (EKF) algorithms are developed for this problem and simulation results are compared.
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