基于自然的优化算法应用于模糊控制、模糊建模、移动机器人和光学字符识别

R. Precup
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引用次数: 1

摘要

只提供摘要形式。全体会议讨论了由罗马尼亚蒂米什瓦拉Politehnica大学自动化和应用信息系过程控制小组获得的自然启发优化算法(nioa)的几个应用。这些算法包括模拟退火算法(SA)、粒子群优化算法(PSO)、引力搜索算法(GSAs)、带电系统搜索算法(CSS)、混合算法和自适应算法。首先讨论了Mamdani和Takagi-Sugeno模糊控制器的设计和整定问题,重点讨论了比例积分模糊控制器(PI fc)和Takagi-Sugeno模糊模型的一般公式。模糊控制器的最优整定是通过定义优化问题来实现的,模糊控制器的整定参数定义为向量变量,目标函数表示为依赖于(绝对或平方)控制误差的函数和状态灵敏度模型的输出灵敏度函数相对于过程参数变化的加权和。nioa通过最小化目标函数来实现参数灵敏度降低的最优模糊控制系统,并给出了非线性伺服系统的最优pi - fc。nioa接下来被应用于防抱死制动系统和磁悬浮系统的Takagi-Sugeno模糊模型参数的最优整定。基于模态等价原理,将一组线性化的过程模型置于规则结果的若干工作点上,推导出过程的初始Takagi-Sugeno模糊模型。优化问题中的向量变量是输入隶属函数参数的一部分。将nioa嵌入到移动设备的最优路径规划算法中。多目标优化是指nioa利用2 - 4个目标函数生成静态环境中移动机器人的最优轨迹,同时避免与环境中可能存在的障碍物和危险区域发生碰撞。nioa通过最小化目标函数来解决优化问题,根据最小化路径长度来产生最优的无碰撞轨迹,并确保生成的轨迹与危险区域保持安全距离。讨论了卷积神经网络在光学字符识别(OCR)应用中的训练算法实现的一些细节。训练算法将nioa与流行的反向传播相结合,通过避免局部最小值来提高性能。对我们的训练算法进行了比较,并从收敛性、计算成本和准确性的角度分析了特定于OCR应用的基准问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nature-inspired optimization algorithms applied to fuzzy control, fuzzy modeling, mobile robots and optical character recognition
Summary form only given. The plenary talk deals with the presentation of several applications of nature-inspired optimization algorithms (NIOAs) obtained by the Process Control group of the Department of Automation and Applied Informatics with the Politehnica University of Timisoara, Romania. The algorithms include Simulated Annealing (SA), Particle Swarm Optimization (PSO), Gravitational Search Algorithms (GSAs), Charged System Search (CSS), hybrid and adaptive versions. Aspects concerning the design and tuning of Mamdani and Takagi-Sugeno fuzzy controllers with dynamics focused on proportional-integral fuzzy controllers (PI FCs) and the general formulation of Takagi-Sugeno fuzzy models are first discussed. The optimal tuning of fuzzy controllers is carried out by the definition of optimization problems with the tuning parameters of the fuzzy controllers defined as vector variables, and with objective functions expressed as the weighted sums of functions that depend on the (absolute or squared) control error and of the output sensitivity functions of the state sensitivity models with respect to process parametric variations. The NIOAs minimize the objective functions to achieve optimal fuzzy control systems with reduced parametric sensitivity, and optimal PI-FCs for nonlinear servo systems are offered. The NIOAs are next applied to the optimal tuning of the parameters of Takagi-Sugeno fuzzy models for Anti-lock Braking Systems and for magnetic levitation systems. Initial Takagi-Sugeno fuzzy models of the process are derived on the basis of the modal equivalence principle by placing a set of linearized process models at several operating points in the rule consequents. The vector variables in the optimization problems are a part of the parameters of the input membership functions. The NIOAs are inserted in optimal path planning algorithms for mobile. The multi-objective optimization is considered as the NIOAs use two to four objective functions to generate optimal trajectories for mobile robots in static environments while avoiding collisions with the obstacles and danger zones that might exist in the environment. The NIOAs solve the optimization problems by minimizing the objective functions, producing optimal collision-free trajectories in terms of minimizing the length of the paths and also assuring that the generated trajectories are at a safe distance from the danger zones. Some details on the implementation of training algorithms for convolutional neural networks in optical character recognition (OCR) applications are discussed. The training algorithms involve NIOAs in combination with the popular back-propagation in order to achieve performance improvements by avoiding local minima. A comparison between our training algorithms is carried out and illustrated in terms of the analysis of convergence, computational cost and accuracy for a benchmark problem specific to OCR applications.
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