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Inverse, forward and other dynamic computations computationally optimized with sparse matrix factorizations

机译:用稀疏矩阵分解构图计算地优化的逆,向前和其他动态计算

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We propose an algorithm to compute the dynamics of articulated rigid-bodies with different sensor distributions. Prior to the on-line computations, the proposed algorithm performs an off-line optimisation step to simplify the computational complexity of the underlying solution. This optimisation step consists in formulating the dynamic computations as a system of linear equations. The computational complexity of computing the associated solution is reduced by performing a permuted LU-factorisation with off-line optimised permutations. We apply our algorithm to solve classical dynamic problems: inverse and forward dynamics. The computational complexity of the proposed solution is compared to `gold standard' algorithms: recursive Newton-Euler and articulated body algorithm. It is shown that our algorithm reduces the number of floating point operations with respect to previous approaches. We also evaluate the numerical complexity of our algorithm by performing tests on dynamic computations for which no gold standard is available.
机译:我们提出了一种算法来计算具有不同传感器分布的铰接刚体的动态。在在线计算之前,所提出的算法执行离线优化步骤以简化基础解决方案的计算复杂度。该优化步骤包括将动态计算作为线性方程的系统组成。通过使用离线优化的置换进行允许的Lu-acionisation来减少计算相关解决方案的计算复杂性。我们应用算法解决经典动态问题:逆向和正向动态。将所提出的解决方案的计算复杂性与“金标准”算法进行比较:递归牛顿 - 欧拉和铰接体算法。结果表明,我们的算法减少了关于先前方法的浮点操作的数量。我们还通过在没有可用的动态计算上执行测试来评估我们算法的数值复杂性。

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