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ارائه الگوریتم ردگیری هدف در شبکه های حسگر بیسیم با رعایت بهینگی مصرف توان با استفاده از کوانتیزاسیون مشاهدات | ||
پدافند الکترونیکی و سایبری | ||
مقاله 10، دوره 6، شماره 2 - شماره پیاپی 22، مرداد 1397، صفحه 109-121 اصل مقاله (1.2 M) | ||
نوع مقاله: مقاله پژوهشی | ||
نویسندگان | ||
مرتضی سپه وند* 1؛ علی ناصری2؛ میثم رییس دانایی2؛ محمد حسین خانزاده2 | ||
1دانشگاه جامع امام حسین(ع) | ||
2جامع امام حسین(ع) | ||
تاریخ دریافت: 11 مرداد 1396، تاریخ بازنگری: 01 اسفند 1397، تاریخ پذیرش: 28 شهریور 1397 | ||
چکیده | ||
روشهای متوسط اجماعی به دلیل تحملپذیری خطای بالا، دقت ردگیری و مقیاسپذیری مناسب از متداولترین روشهای ردگیری در شبکههای حسگر بیسیم هستند. اما این روشها به علت ایجاد سربار مخابراتی بالا، بهرهوری انرژی و پهنای باند مناسبی را در این شبکهها ندارند. الگوریتم ردگیری پیشنهادی با استفاده از خوشهبندی پویا (بر مبنای باند کرامر- رائوپسین) و کوانتیزاسیون وفقی مشاهدات، تعداد حسگرهای درگیر و سربار اطلاعاتی تبادل شده شبکه را کاهش میدهد. از سوی دیگر الگوریتم مذکور از ترکیب روش چندجانبه و فیلتر ذرهای برای ردگیری هدف بر اساس اطلاعات کوانتیزه دریافتی بهره میجوید. این موضوع باعث شده است که در عین کاهش دقت مشاهدات ارسالی به میزان 50 درصد (4 بیت)، خطای ردگیری فقط 10 درصد نسبت به الگوریتمی که در آن از کوانتیزاسیون استفاده نشده است بالاتر باشد. | ||
کلیدواژهها | ||
شبکه حسگر بیسیم؛ ردگیری هدف؛ کوانتیزاسیون؛ فیلتر کالمن توسعهیافته؛ فیلتر ذرهای؛ باند کرامر-رائو پسین | ||
عنوان مقاله [English] | ||
Target Tracking Algorithm in Wireless Sensor Networks with Optimum Power Consumption Using Quantized Observation | ||
نویسندگان [English] | ||
Mortaza Sepahvand1؛ Ali Naseri2؛ Meysam Raeis Danaei2؛ Mohammad Hossein Khanzadeh2 | ||
چکیده [English] | ||
Consensus-based methods are the most commonly used tracking methods in wireless sensor networks due to high error tolerance, precision tracking and scalability. But these methods, due to the high telecommunication overhead, do not have suitable energy efficiency and bandwidth in networks. The proposed tracking algorithm reduces the number of contributing sensors and the network interchange information overhead using dynamic clustering (based on the Cramer-Rao lower bound), and the adaptive quantization of the observations,. On the other hand, the algorithm uses a combination of Multi-lateration method and particle filtering to track targets based on the quantized information. This has led to a decrease in the accuracy of sent observations by 50% (4 bits). as a result, the tracking error is only 10% higher than the algorithm in which no quantization is used. | ||
کلیدواژهها [English] | ||
Wireless Sensor Network, Target Tracking, Quantization, Extended Kalman Filter, Particle Fil-ter؛ Posterior Cramer-Rao Lower Bound | ||
مراجع | ||
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