Maximum Solar Energy Tracking Leverage High-DoF Robotics System with Deep Reinforcement Learning
Solar trajectory monitoring is a pivotal challenge in solar energy systems, underpinning applications such as autonomous energy harvesting and environmental sensing. A prevalent failure mode in sustained solar tracking arises when the predictive algorithm erroneously diverges from the solar locus, e...
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Zusammenfassung: | Solar trajectory monitoring is a pivotal challenge in solar energy systems,
underpinning applications such as autonomous energy harvesting and
environmental sensing. A prevalent failure mode in sustained solar tracking
arises when the predictive algorithm erroneously diverges from the solar locus,
erroneously anchoring to extraneous celestial or terrestrial features. This
phenomenon is attributable to an inadequate assimilation of solar-specific
objectness attributes within the tracking paradigm. To mitigate this deficiency
inherent in extant methodologies, we introduce an innovative objectness
regularization framework that compels tracking points to remain confined within
the delineated boundaries of the solar entity. By encapsulating solar
objectness indicators during the training phase, our approach obviates the
necessity for explicit solar mask computation during operational deployment.
Furthermore, we leverage the high-DoF robot arm to integrate our method to
improve its robustness and flexibility in different outdoor environments. |
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DOI: | 10.48550/arxiv.2411.14568 |