Knowledge Agora



Similar Articles

Title Smart city fire surveillance: A deep state-space model with intelligent agents
ID_Doc 38296
Authors Rehman, A; Saeed, F; Rathore, MM; Paul, A; Kang, JM
Title Smart city fire surveillance: A deep state-space model with intelligent agents
Year 2024
Published
Abstract In the realm of smart city development, the integration of intelligent agents has emerged as a pivotal strategy to enhance the efficacy of search methodologies. This study introduces a novel state-space navigational model employing intelligent agents tailored specifically for fire surveillance in urban environments. Central to this model is the fusion of a convolutional neural network and multilayer perceptron, enabling accurate fire detection and localisation. Leveraging this capability, the intelligent agent proactively navigates through the search space, guided by the shortest path to the identified fire location. The utilisation of the A* algorithm as the search mechanism underscores the efficiency and efficacy of our proposed approach. Implemented in Python and Gephi, our method surpasses traditional search algorithms, both informed and uninformed, demonstrating its effectiveness in navigating urban landscapes for fire surveillance. This research study contributes significantly to the field by offering a robust solution for proactive fire detection and surveillance in smart city environments, thereby enhancing public safety and urban resilience. This research study introduces a state-space navigational model using intelligent agents, combined with a convolutional neural network and multilayer perceptron, for efficient fire surveillance in smart cities. The model proactively guides agents through the shortest path to a fire, utilising the A & lowast; algorithm. Comparative analysis with other algorithms shows the proposed method's effectiveness in providing swift navigation. image
PDF https://onlinelibrary.wiley.com/doi/pdfdirect/10.1049/smc2.12086

Similar Articles

ID Score Article
38217 Avazov, K; Mukhiddinov, M; Makhmudov, F; Cho, YI Fire Detection Method in Smart City Environments Using a Deep-Learning-Based Approach(2022)Electronics, 11, 1
44667 Nadeem, M; Dilshad, N; Alghamdi, NS; Dang, LM; Song, HK; Nam, J; Moon, H Visual Intelligence in Smart Cities: A Lightweight Deep Learning Model for Fire Detection in an IoT Environment(2023)Smart Cities, 6, 5
42869 Park, S; Lee, S; Jang, H; Yoon, G; Choi, MI; Kang, B; Cho, K; Lee, T; Park, S Smart Fire Safety Management System (SFSMS) Connected with Energy Management for Sustainable Service in Smart Building Infrastructures(2023)Buildings, 13, 12
40987 Talaat, FM; ZainEldin, H An improved fire detection approach based on YOLO-v8 for smart cities(2023)
40645 Dalal, S; Lilhore, UK; Radulescu, M; Simaiya, S; Jaglan, V; Sharma, A A hybrid LBP-CNN with YOLO-v5-based fire and smoke detection model in various environmental conditions for environmental sustainability in smart city(2024)
Scroll