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Dynamic storage policies based on order frequency are explored in the study, and the best optimization method is determined. The results show that the GA has lower order picking times and costs than the random assignment technique, while the DQL model increases the efficiency of operations through creating dynamic location policies. The study also shows that dynamic dwell points improve order picking time by 44% compared to fixed dwell points. 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