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An efficient computational intelligence approach for solving fractional order Riccati equations using ANN and SQP

机译:使用ANN和SQP求解分数阶Riccati方程的有效计算智能方法

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A new computational intelligence technique is presented for solution of non-linear quadratic Riccati differential equations of fractional order based on artificial neural networks (ANNs) and sequential quadratic programming (SQP). The power of feed forward ANNs in an unsupervised manner is exploited for mathematical modeling of the equation; training of weights is carried out with an efficient constrained optimization technique based on the SQP algorithm. The proposed scheme is evaluated on two initial value problems of the Riccati fractional order equation with integer and non-integer derivatives. Comparison of results with the exact solution, and with reference numerical methods demonstrates the correctness of the proposed methodology. Performance of the proposed scheme is also validated using results of statistical analysis based on a sufficiently large number of independent runs.
机译:提出了一种新的计算智能技术,用于基于人工神经网络(ANN)和顺序二次规划(SQP)的分数阶非线性二次Riccati微分方程求解。利用无监督方式的前馈ANN的功能对方程进行数学建模。权重训练是基于SQP算法的有效约束优化技术来进行的。在带有整数和非整数导数的Riccati分数阶方程的两个初值问题上评估了该方案。将结果与精确解和参考数值方法进行比较,证明了所提出方法的正确性。还使用基于足够大量独立运行的统计分析结果来验证所提出方案的性能。

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