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Reinforcement learning-based dynamic cleaning scheduling framework for solar energy system

arXiv ·

This study introduces a reinforcement learning (RL) framework using Proximal Policy Optimization (PPO) and Soft Actor-Critic (SAC) to optimize the cleaning schedules of photovoltaic panels in arid regions. Applied to a case study in Abu Dhabi, the PPO-based framework demonstrated up to 13% cost savings compared to simulation optimization methods by dynamically adjusting cleaning intervals based on environmental conditions. The research highlights the potential of RL in enhancing the efficiency and reducing the operational costs of solar power generation.

WAYAKIT: The sweet smell of success

KAUST ·

KAUST Ph.D. students Sandra Medina and Luisa Javier created WAYAKIT, a compact, organic, and portable multi-cleaner and odor remover for travelers. Their biotechnology-based startup, WAYAK Group, aims to transform the laundry industry with affordable, low-resource solutions. WAYAKIT uses biotechnology to degrade odor-causing molecules and solubilize stains. Why it matters: This showcases KAUST's entrepreneurial environment and the potential for scientific research to address practical, everyday challenges with sustainable solutions.