| Literature DB >> 30103561 |
Xiaowei Fu1,2, Hui Wang3, Bin Li4, Xiaoguang Gao5.
Abstract
This paper presents a sampling-based approximation for multiple unmanned aerial vehicle (UAV) task allocation under uncertainty. Our goal is to reduce the amount of calculations and improve the accuracy of the algorithm. For this purpose, Gaussian process regression models are constructed from an uncertainty parameter and task reward sample set, and this training set is iteratively refined by active learning and manifold learning. Firstly, a manifold learning method is used to screen samples, and a sparse graph is constructed to represent the distribution of all samples through a small number of samples. Then, multi-points sampling is introduced into the active learning method to obtain the training set from the sparse graph quickly and efficiently. This proposed hybrid sampling strategy could select a limited number of representative samples to construct the training set. Simulation analyses demonstrate that our sampling-based algorithm can effectively get a high-precision evaluation model of the impact of uncertain parameters on task reward.Entities:
Keywords: active learning; manifold learning; multi-UAVs; task allocation; uncertainty
Year: 2018 PMID: 30103561 PMCID: PMC6111736 DOI: 10.3390/s18082645
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Total tasks scores of Deterministic CBBA: Assignment vs. Execution.
Figure 2Total tasks scores of Robust CBBA: Assignment vs. Execution.
Figure 3Real mapping relationship (sample set).
Figure 4and Probability distribution (sample set).
Figure 5Random Selection Strategy and Active Learning Selection Strategy Simulation Results.
Figure 6AL multi-points sampling.
Figure 7Improved AL Multi-points Sampling.
Figure 8Relative errors of Improved Sampling Strategy and Active Learning Multi-points Simultaneous Sampling Strategy.
Figure 9Improved AL Convergence Sampling Quantity.
Comparison of sampling methods (achieving the same relative root mean square error).
| Sampling Method | Relative RMSE (%) | Number of Iterations | Number of Total Samples of Training Set | Number of Training | Number of Information Entropy Evaluation |
|---|---|---|---|---|---|
| active learning single-point sampling | 0.20 | 112 | 122 |
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| active learning multi-points sampling | 0.20 | 13 | 140 |
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| improved sampling strategy multi-points sampling | 0.20 | 8 | 90 |
| 800 |
Comparison of sampling methods (the same number of samples sampled).
| Sampling Method | Relative RMSE (%) | Number of Iterations | Number of Total Samples of Training Set | Number of Training | Number of Information Entropy Evaluation |
|---|---|---|---|---|---|
| active learning single-point sampling | 0.37 | 80 | 90 |
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| active learning multi-points sampling | 0.86 | 8 | 90 |
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| improved sampling strategy multi-points sampling | 0.20 | 8 | 90 |
| 800 |