Yıl: 2021 Cilt: 32 Sayı: 1 Sayfa Aralığı: 147 - 163 Metin Dili: İngilizce İndeks Tarihi: 04-06-2021

OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY

Öz:
With the advances in sensor and data transfer technologies, the usage areas ofAutomatic License Plate Recognition (ALPR) systems have been expanded in the publicand private sectors. In public safety, ALPR systems are used to monitor and controltraffic data at both individual and collective levels. To build an efficient sensornetwork, the locations of ALPR systems should be determined optimally. This studyprovides an approach to determine optimal locations of ALPR systems that maximizenetwork coverage consisting of two measures: i) vehicle coverage and ii) roadcoverage. The former represents the daily average vehicle flow whereas the latterstands for the number of road-links covered. The relative importance of vehicle androad coverages are taken into consideration, and optimal solutions under variousscenarios are presented. A close neighbor constraint is introduced to avoid inefficientdistribution of ALPR systems on the network. A case study with numerical examplesdesigned for two cities in Turkey is provided. The centralized and decentralizedsolutions are compared against the current state, and the results show that thenetwork coverage increases substantially in the centralized case.
Anahtar Kelime:

PLAKA TANIMA SENSORÜ YER SEÇİMİ OPTİMİZASYONU: TÜRKİYE ÖRNEĞİ

Öz:
Sensör ve veri aktarım teknolojilerindeki gelişmeler ile Otomatik Plaka Tanıma (OPT) sistemlerinin kamu ve özel sektörde kullanım alanları genişlemiştir. OPT sistemleri kamu güvenliğinde trafik verilerini hem bireysel hem de kolektif düzeylerde izlemek ve kontrol etmek için kullanılmaktadır. Etkin bir sensör ağı oluşturmak için OPT sistemlerinin konumu optimal şekilde belirlenmelidir. Bu çalışma, OPT sistemlerinin konumlarını i) araç kapsama ve ii) yol kapsamadan oluşan ağ kapsamayı maksimize edecek şekilde belirlemek için bir yaklaşım sunmaktadır. İlki günlük ortalama araç akışını temsil ederken, ikincisi kapsanan yol bağlantılarının sayısını temsil etmektedir. Araç ve yol kapsamanın göreceli önemi dikkate alınarak çeşitli senaryolar altında optimal çözümler sunulmuştur. OPT sistemlerinin ağ üzerinde verimsiz dağıtımını önlemek için yakın komşu kısıtlaması getirilmiştir. Türkiye’deki iki şehir için tasarlanmış sayısal örneklerle bir vaka çalışması sunulmuştur. Merkezi ve yerel çözümler mevcut durumla karşılaştırmıştır ve sonuçlar merkezi durumda ağ kapsamının önemli ölçüde arttığını göstermektedir.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Gör B, KARAKAYA G (2021). OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. , 147 - 163.
Chicago Gör Buğra,KARAKAYA GULSAH OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. (2021): 147 - 163.
MLA Gör Buğra,KARAKAYA GULSAH OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. , 2021, ss.147 - 163.
AMA Gör B,KARAKAYA G OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. . 2021; 147 - 163.
Vancouver Gör B,KARAKAYA G OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. . 2021; 147 - 163.
IEEE Gör B,KARAKAYA G "OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY." , ss.147 - 163, 2021.
ISNAD Gör, Buğra - KARAKAYA, GULSAH. "OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY". (2021), 147-163.
APA Gör B, KARAKAYA G (2021). OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. Endüstri Mühendisliği, 32(1), 147 - 163.
Chicago Gör Buğra,KARAKAYA GULSAH OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. Endüstri Mühendisliği 32, no.1 (2021): 147 - 163.
MLA Gör Buğra,KARAKAYA GULSAH OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. Endüstri Mühendisliği, vol.32, no.1, 2021, ss.147 - 163.
AMA Gör B,KARAKAYA G OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. Endüstri Mühendisliği. 2021; 32(1): 147 - 163.
Vancouver Gör B,KARAKAYA G OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY. Endüstri Mühendisliği. 2021; 32(1): 147 - 163.
IEEE Gör B,KARAKAYA G "OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY." Endüstri Mühendisliği, 32, ss.147 - 163, 2021.
ISNAD Gör, Buğra - KARAKAYA, GULSAH. "OPTIMIZATION OF PLATE RECOGNITION SENSOR LOCATIONS: A CASE STUDY IN TURKEY". Endüstri Mühendisliği 32/1 (2021), 147-163.