Abstract

One of the problems tourism faces is how to make itineraries more effective and efficient. This research has solved the routing problem with the objective of maximizing the score and minimizing the time needed for the tourist’s itinerary. Maximizing the score means collecting a maximum of various kinds of score from each destination that is visited. The profits differ according to whether those destinations are the favorite ones for the tourists or not. Minimizing time means traveling time and visiting time in the itinerary being kept to a minimum. Those are small case with 16 tourism destinations in East Java, and large case with 56 instances consists of 100 destinations each from previous research. The existing model is the Team Orienteering Problem with Time Window (TOPTW), and the development has been conducted by adding another objective, minimum time, become Flexible TOPTW. This model guarantees that an effective itinerary with efficient timing to implement will be produced. Modification of Iterated Local Search (ILS) into Adjustment ILS (AILS) has been done by replacing random construction in the early phase with heuristic construction, continue with Permutation, Reserved and Perturbation. This metaheuristic method will address this NP-hard problem faster than the heuristic method because it has better preparation and process. Contributing to this research is a multi-objective model that combines maximum score and minimum time, and a metaheuristics method to solve the problem faster and effectively. There are calibration parameter with 17 instances of 100 destinations each, small case test using Mixed Integer Linear Programming, and large case test comparing AILS with Multi-Start Simulated Annealing (MSA), Simulated Annealing (SA), Artificial Bee Colony (ABC), and Iterated Local Search. The result shows that the proposed model will provide itinerary with less number of visited destination 4.752% but has higher total score 8.774%, and 3836.877% faster, comparing with MSA, SA, and ABC. While AILS is compared with ILS, it has less visited destination 5.656%, less total score 56.291%, and faster 375.961%. Even though AILS has more efficient running time than other methods, it needs improvement in algorithm to create better result.

Highlights

  • Tourism in Indonesia has a promising future

  • The proposed FTOPTW algorithm and Adjustment ILS (AILS) method was implemented in Java by Eclipse

  • (17 + 56 + 21) problem instances are generated, based on Solomon’s datasets. These problems can be classified as the problems for parameter calibration, comparing problems with Simulated Annealing (MSA and SA) and Artificial Bee Colony (ABC), and the last is comparing problems with Iterated Local Search (ILS)

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Summary

Introduction

Tourism in Indonesia has a promising future. Data from the Indonesian Ministry of Tourism (2017) show tourism generated 205.04 trillion rupiah in foreign currency while attracting 14.04 million international tourists and 277 million domestic tourists. Encouraging travel and spending is one of strategic targets of the ministry especially for domestic tourists. The itineraries must be planned well so that it covers. Activities that are included initinerary preparation are choosing favorite destinations and arranging them while considering the destinations’ operational times and tourists’ limited time, making it into a schedule to follow. The combination becomes more complex with more destinations, constraints, and objectives. This condition has been categorized as a tourism routing problem by previous researchers. This research is interesting because it attempts to fulfill tourists’ needs, arrange tourists’ favorite destinations, and guarantee the minimum time without breaking the constraints

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