Conference Papers
Permanent URI for this collectionhttps://idr.nitk.ac.in/handle/123456789/28506
Browse
Search Results
Item Hybridization Approach to Optimize the Expected Loss of Demand in Drone Delivery Scheduling(Institute of Electrical and Electronics Engineers Inc., 2024) Harsha, S.S.; Muddi, K.S.; Jindrali, S.S.; Reji, S.; Das, M.; Mohan, B.R.This paper explores a hybrid-optimization approach for reducing the expected loss of delivery in drone delivery.This paper aims to give a deep knowledge about drone scheduling using machine learning and bio-optimized approaches. Using hybridization of K-Mean Clustering algorithms and Genetic algorithms, the paper makes a comparison between the performance of the above algorithm with the hybridization of hierarchical agglomerative clustering algorithms and ant colony optimization algorithms, resulting in valuable insights into drone delivery efficiency and reliability. © 2024 IEEE.
