VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS

The Pickup and Delivery Problem with Cross Docking (PDPCD) is a logistic problem that involves the pickup and delivery of goods to a set of customer pairs. The vehicle routes selection in this problem aims to minimize transportation costs while considering at least one of two pickup and delivery...

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主要作者: Ahmad Fauzi, Mario
格式: Theses
語言:Indonesia
在線閱讀:https://digilib.itb.ac.id/gdl/view/79666
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id id-itb.:79666
spelling id-itb.:796662024-01-15T08:12:43ZVEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS Ahmad Fauzi, Mario Indonesia Theses PDPCD, direct shipping, cross docking, mathematical model, ALNS, SA INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/79666 The Pickup and Delivery Problem with Cross Docking (PDPCD) is a logistic problem that involves the pickup and delivery of goods to a set of customer pairs. The vehicle routes selection in this problem aims to minimize transportation costs while considering at least one of two pickup and delivery strategies, namely direct shipping and cross docking. This research proposes a mathematical model and a combined algorithm of Adaptive Large Neighborhood Search (ALNS) and Simulated Annealing (SA) which is developed based on several previous studies for solving PDPCD. Time window constraints for customers and heterogeneous fix fleet vehicle constraints are also introduced in this research. The results show that the proposed algorithm provides a solution cost gap of 0.91% with a computation time 700 times faster than the optimal solution in LINGO. Additionally, the ALNS-SA algorithm yields solution cost and computation time reductions of 2.1% and 75.1%, respectively, compared to the cost and computation time of the SA algorithm proposed by Suprayogi (2023) for the PDPCD with time window and homogeneous vehicle constraints. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description The Pickup and Delivery Problem with Cross Docking (PDPCD) is a logistic problem that involves the pickup and delivery of goods to a set of customer pairs. The vehicle routes selection in this problem aims to minimize transportation costs while considering at least one of two pickup and delivery strategies, namely direct shipping and cross docking. This research proposes a mathematical model and a combined algorithm of Adaptive Large Neighborhood Search (ALNS) and Simulated Annealing (SA) which is developed based on several previous studies for solving PDPCD. Time window constraints for customers and heterogeneous fix fleet vehicle constraints are also introduced in this research. The results show that the proposed algorithm provides a solution cost gap of 0.91% with a computation time 700 times faster than the optimal solution in LINGO. Additionally, the ALNS-SA algorithm yields solution cost and computation time reductions of 2.1% and 75.1%, respectively, compared to the cost and computation time of the SA algorithm proposed by Suprayogi (2023) for the PDPCD with time window and homogeneous vehicle constraints.
format Theses
author Ahmad Fauzi, Mario
spellingShingle Ahmad Fauzi, Mario
VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
author_facet Ahmad Fauzi, Mario
author_sort Ahmad Fauzi, Mario
title VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
title_short VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
title_full VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
title_fullStr VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
title_full_unstemmed VEHICLE FLOW FORMULATION MODEL AND HYBRID ALGORITHM OF ADAPTIVE LARGE NEIGHBORHOOD SEARCH AND SIMULATED ANNEALING FOR SOLVING THE PICKUP AND DELIVERY PROBLEM WITH CROSS-DOCKING (PDPCD) CONSIDERING TIME WINDOWS AND HETEROGENEOUS FIXED-FLEET VEHICLES CONSTRAINTS
title_sort vehicle flow formulation model and hybrid algorithm of adaptive large neighborhood search and simulated annealing for solving the pickup and delivery problem with cross-docking (pdpcd) considering time windows and heterogeneous fixed-fleet vehicles constraints
url https://digilib.itb.ac.id/gdl/view/79666
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