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Solving chance constrained optimal control problems in aerospace via Kernel Density Estimation

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Table 1: Efficiency of some kernels
Table 2: Parameters for the deterministic optimization m e ∗
Figure 3: Plot of the average value and variance of optimal cost J and R as functions of n.
Figure 4: Plot of the Kernel Density Estimator f ˆ of M u (T, m ∗ e ) and its integral F ˆ .
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