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مدیریت تحرک چاهک در شبکههای حسگر متحرک بهمنظور تعادل بار سرخوشهها | ||
پدافند الکترونیکی و سایبری | ||
مقاله 5، دوره 12، شماره 2 - شماره پیاپی 46، شهریور 1403، صفحه 53-66 اصل مقاله (1.07 M) | ||
نوع مقاله: مقاله پژوهشی | ||
نویسندگان | ||
امید عابدی* 1؛ فاطمه مرادی2؛ مهدیه قزوینی3 | ||
1استادیار، دانشگاه شهیدباهنر، کرمان ، ایران | ||
2کارشناسی ارشد، دانشگاه شهیدباهنر، کرمان ، ایران | ||
3دانشیار، دانشگاه شهیدباهنر، کرمان ، ایران | ||
تاریخ دریافت: 18 اسفند 1402، تاریخ بازنگری: 16 تیر 1403، تاریخ پذیرش: 13 مرداد 1403 | ||
چکیده | ||
باتوجهبه انرژی محدود باطری گرههای حسگر، یکی از چالشهای طراحی شبکههای حسگر بیسیم، متعادلکردن مصرف انرژی است که منجر به افزایش طول عمر شبکه میشود. در این پژوهش، ما علاوه بر خوشهبندی مناسب گرههای حسگر، با کمک نحوه انتقال دادهها از سرخوشه به چاهک، انرژی مصرفی را به طور قابلتوجهی کاهش دادهایم. از طرفی، بهترین راهحل شناختهشده برای بحرانیترین مشکل شبکههای حسگر بیسیم که مشکل نقطه داغ یا چاله انرژی است، استفاده از چاهک متحرک است. در روش پیشنهادی از دو چاهک متحرک که یکی از آنها در یک ناحیه مشخص و دیگری در کل محیط شبکه بهصورت کنترلشده حرکت میکنند، استفاده شده است. دو چاهک متحرک با استفاده از مدل تحرک Random Way Point (RWP) اولویتبندی شده، با درنظرگرفتن پارامترهایی مانند ناحیه متراکم و سرخوشه متراکم، یک مکان مناسب را در محیط شبکه انتخاب کرده و به سمت آن حرکت میکنند. همچنین برای جلوگیری از تبلیغات مکرر مکان فعلی چاهک، سرخوشههای آگاه از موقعیت را، برای ذخیرهکردن موقعیت بهروز شده دو چاهک متحرک در نظر گرفتهایم. نتایج ارزیابیها نشان میدهند که روش پیشنهادی از لحاظ طول عمر شبکه، انرژی باقیمانده گرهها، تعداد بستههای ارسالی، میزان پوشش شبکه و سربار در مقایسه با الگوریتمهای مشابه، کارایی بالاتری از خود نشان میدهد و در نهایت به طور میانگین، روش پیشنهادی در تمام پارامترها، حدود 8 درصد بهبود داشته است. | ||
کلیدواژهها | ||
شبکههای حسگر بیسیم؛ چاهک متحرک؛ مسیریابی؛ تعیین مسیر؛ تعادل بار | ||
عنوان مقاله [English] | ||
Sink mobility management in mobile sensor networks for cluster-heads load balancing | ||
نویسندگان [English] | ||
Omid Abedi1؛ fatemeh Moradi2؛ Mahdieh Ghazvini3 | ||
1Assistant Professor, Shahid Bahnar University, Kerman, Iran | ||
2Master's degree, Shahid Bahaner University, Kerman, Iran | ||
3Associate Professor, Shahid Bahnar University, Kerman, Iran | ||
چکیده [English] | ||
Paying attention to the limited battery energy of sensor nodes is one of the design challenges of wireless sensor networks (WSNs). It is essential to balance energy consumption to enhance network lifetime. In this research, we focus on clustering sensor nodes and optimizing the data transfer from the cluster head to the sink, which significantly reduces energy consumption. Furthermore, one of the most effective solutions to the critical problem of wireless sensor networks, known as the hotspot or energy-hole problem, is the use of a mobile sink. The proposed method employs two mobile sinks: one moves within a specific area, while the other traverses the entire network environment. Using the prioritized Random Way Point (RWP) mobility model, both mobile sinks select suitable locations in the network based on parameters such as density of nodes and cluster heads. To minimize frequent advertisements of the current location of the sinks, we have implemented location-aware cluster heads that save the updated positions of the two mobile sinks. The evaluation results indicate that the proposed method demonstrates higher efficiency compared to similar algorithms in terms of network lifetime, residual energy of nodes, number of sent packets, network coverage, and overhead. On average, the proposed method has shown an improvement of approximately 8% across all parameters . | ||
کلیدواژهها [English] | ||
Wireless Sensor Networks, Mobile Sink, Routing, Trajectory determination, Load Balancing | ||
مراجع | ||
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