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Approximating Markov Chain Approach to Optimal Feedback Control of a Flexible Needle

机译:近似马尔可夫链法在柔性针头最优反馈控制中的应用

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摘要

We present a computationally efficient approach for the intra-operative update of the feedback control policy for the steerable needle in the presence of the motion uncertainty. The solution to dynamic programming (DP) equations, to obtain the optimal control policy, is difficult or intractable for nonlinear problems such as steering flexible needle in soft tissue. We use the method of approximating Markov chain to approximate the continuous (and controlled) process with its discrete and locally consistent counterpart. This provides the ground to examine the linear programming (LP) approach to solve the imposed DP problem that significantly reduces the computational demand. A concrete example of the two-dimensional (2D) needle steering is considered to investigate the effectiveness of the LP method for both deterministic and stochastic systems. We compare the performance of the LP-based policy with the results obtained through more computationally demanding algorithm, iterative policy space approximation. Finally, the reliability of the LP-based policy dealing with motion and parametric uncertainties as well as the effect of insertion point/angle on the probability of success is investigated.
机译:我们提出了一种有效的计算方法,用于在运动不确定的情况下对可操纵针的反馈控制策略进行术中更新。动态规划(DP)方程的解决方案,以获得最佳的控制策略,对于非线性问题(例如在软组织中操纵柔性针)来说是困难的或棘手的。我们使用近似马尔可夫链的方法,以其离散且局部一致的对应物来近似连续(和受控)过程。这为检查线性编程(LP)方法以解决强加的DP问题(大大减少了计算需求)奠定了基础。考虑了二维(2D)针转向的具体示例,以研究LP方法对确定性系统和随机系统的有效性。我们将基于LP的策略的性能与通过更具计算要求的算法(迭代策略空间近似)获得的结果进行比较。最后,研究了基于线性规划的处理运动和参数不确定性的策略的可靠性,以及插入点/角度对成功概率的影响。

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