یک رویکرد جدید برای مسیریابی اتوبوس مدرسه با استفاده از الگوریتم بهینهساز کوسه سفید
محورهای موضوعی : پردازش چند رسانه ای، سیستمهای ارتباطی، سیستمهای هوشمندمحمد سالمی فر 1 , محمدرضا محمدرضائی 2
1 - کارشناسی ارشد، گروه مهندسی کامپیوتر، واحد بردسیر، دانشگاه آزاد اسلامی، بردسیر، ایران
2 - استادیار، گروه مهندسی کامپیوتر، واحد رامهرمز، دانشگاه آزاد اسلامی، رامهرمز، ایران
کلید واژه: SBRP, مسیریابی اتوبوس مدرسه, الگوریتم بهینهساز کوسه سفید,
چکیده مقاله :
مسئله مسیریابی اتوبوس مدرسه (SBRP) چالش پیچیدهای در حملونقل است که شامل یافتن مسیرهای اتوبوس بهینه است. پرداختن به مسائل اضطراری مانند افزایش بار ترافیک، جمعیت بالای دانشآموزان، کمبود منابع، ایمنی و خطرات میتواند نقش اساسی در طراحی یک برنامه کارآمد برای سیستم حملونقل دانشآموزی داشته باشد. اهمیت این موضوع زمانی برجسته میشود که نیازها و انتظارات همه ذینفعان از جمله دانشآموزان، بخش خصوصی و شهرداریها درنظرگرفته شوند. هدف SBRP طراحی مسیرهایی برای ناوگان اتوبوس مدرسه است که دانشآموزان را در یک سری از ایستگاههای اتوبوس از پیش تعریفشده سوارمیکند و آنها را در مدرسه پیاده میکند. این مسئله بهعنوان NP-Hard شناخته میشود؛ بنابراین پرداختن به مسئله مسیریابی اتوبوس مدرسه برای اطمینان از راهحل ایمن و مقرونبهصرفه برای دانشآموزان، والدین و ذینفعان مهم است. بااین حال، چالشهایی از نظر محدودیتها و اهداف متعدد وجوددارد. در این مقاله، مسئله مسیریابی اتوبوس مدرسه بهعنوان مسئله بهینهسازی فرموله شده است. برای حل این مسئله از الگوریتم بهینهساز کوسه سفید استفاده شده است. روش پیشنهادی در شبیهساز متلب اجرا شده است. تعداد دانشآموز، 100 در نظر گرفته شده است. تعداد اتوبوس، 7 اتوبوس و تعداد مدرسه، 5 مدرسه است. معیارهای ارزیابی شامل مجموع فواصل حرکت سرویسهای مدارس، میانگین زمان رفتوآمد دانشآموزان، کل زمان سفر و مطلوبیت مسیریابی بودهاند. روش پیشنهادی توانسته است معیارهای ارزیابی را نسبت به طرح پایه مبتنی بر الگوریتم ژنتیک و روش مبتنی بر الگوریتم مورچگان بهبوددهد.
Abstract
Introduction:School Bus Routing Problem (SBRP) is a complex transportation challenge that involves finding optimal bus routes. addressing urgent issues such as increased traffic load, high student population, lack of resources, safety, and hazards can play an essential role in designing an efficient program for the student transportation system. The importance of this issue is highlighted when the needs and expectations of all stakeholders, including students, the private sector, and municipalities, are considered.
Method: The goal of SBRP is to design routes for the school bus fleet that pick up students at a series of pre-defined bus stops and drop them off at school. This problem is known as NP-Hard; It is therefore important to address the issue of school bus routing to ensure a safe and cost-effective solution for students, parents and stakeholders. However, there are challenges in terms of limitations and multiple objectives. In this paper, the school bus routing problem is formulated as an optimization problem. To solve this problem, the white shark optimization algorithm has been used.
Results: The proposed method has been implemented in MATLAB simulator. The number of students is 100. The number of buses is 7 and the number of schools is 5. The evaluation criteria included the total travel distances of school services, the average commuting time of students, the total travel time and the desirability of routing.
Discussion: The proposed method has been able to improve the evaluation criteria compared to the basic plan based on the genetic algorithm and the method based on the ant algorithm.
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