针对二人零和随机非线性微分对策问题,利用统计线性化技术并提出一种新的逼近策略控制方法.通过求解具有统计线性化参数的Riccati微分方程得到逼近控制策略,该Riccati微分方程与一般线性系统的Riccati微分方程具有明显的区别;同时对控制量受约束情形的控制策略也进行了求解;最后通过仿真验证了所得结论的正确性.
A novel solution for a class of nonlinear zero-sum stochastic differential games is given based on the technique of statistical linearization. The near optimal feedback strategies are derived by solving the statistical state dependent Riccati equation, which is significantly different from the Riccati equation of linear systems. The case of strategy with bound limitation is also investigated. An example is given to illustrate the application of the theory.