A Comparative Analysis of Explainable Artificial Intelligence Models for Electric Field Strength Prediction over Eight European Cities

被引:0
|
作者
Kiouvrekis, Yiannis [1 ,2 ,3 ]
Givisis, Ioannis [1 ]
Panagiotakopoulos, Theodor [4 ]
Tsilikas, Ioannis [5 ]
Ploussi, Agapi [6 ]
Spyratou, Ellas [6 ]
Efstathopoulos, Efstathios P. [6 ]
机构
[1] Univ Thessaly, Fac Publ & One Hlth, Math Comp Sci & Artificial Intelligence Lab, Kardhitsa 43100, Greece
[2] Univ Limassol, Dept Informat Technol, CY-3020 Limassol, Cyprus
[3] Univ Nicosia, Business Sch, 46 Makedonitissas Ave, CY-2417 Nicosia, Cyprus
[4] Univ Patras, Dept Management Sci & Technol, Patras 26334, Greece
[5] Natl Tech Univ Athens, Dept Appl Phys & Math, Iroon Polytech 9, Athens 15772, Greece
[6] Natl & Kapodistrian Univ Athens, Med Sch, Dept Radiol 2, Athens 12462, Greece
关键词
machine learning; explainable artificial intelligence; electric field strength; radio environment map; urban areas; IoT sensors; MAP;
D O I
10.3390/s25010053
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The widespread propagation of wireless communication devices, from smartphones and tablets to Internet of Things (IoT) systems, has become an integral part of modern life. However, the expansion of wireless technology has also raised public concern about the potential health risks associated with prolonged exposure to electromagnetic fields. Our objective is to determine the optimal machine learning model for constructing electric field strength maps across urban areas, enhancing the field of environmental monitoring with the aid of sensor-based data collection. Our machine learning models consist of a novel and comprehensive dataset collected from a network of strategically placed sensors, capturing not only electromagnetic field readings but also additional urban features, including population density, levels of urbanization, and specific building characteristics. This sensor-driven approach, coupled with explainable AI, enables us to identify key factors influencing electromagnetic exposure more accurately. The integration of IoT sensor data with machine learning opens the potential for creating highly detailed and dynamic electromagnetic pollution maps. These maps are not merely static snapshots; they offer researchers the ability to track trends over time, assess the effectiveness of mitigation efforts, and gain a deeper understanding of electromagnetic field distribution in urban environments. Through the extensive dataset, our models can yield highly accurate and dynamic electric field strength maps. For this study, we performed a comprehensive analysis involving 566 machine learning models across eight French cities: Lyon, Saint-& Eacute;tienne, Clermont-Ferrand, Dijon, Nantes, Rouen, Lille, and Paris. The analysis incorporated six core approaches: k-Nearest Neighbors, XGBoost, Random Forest, Neural Networks, Decision Trees, and Linear Regression. The findings underscore the superior predictive capabilities of ensemble methods such as Random Forests and XGBoost, which outperform individual models. Simpler approaches like Decision Trees and k-NN offer effective yet slightly less precise alternatives. Neural Networks, despite their complexity, highlight the potential for further refinement in this application. In addition, our results show that the machine learning models significantly outperform the linear regression baseline, demonstrating the added value of more complex techniques in this domain. Our SHAP analysis reveals that the feature importance rankings in tree-based machine learning models differ significantly from those in k-NN, neural network, and linear regression models.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Proposition of new computer artificial intelligence models for shear strength prediction of reinforced concrete beams
    Hayder Riyadh Mohammed Mohammed
    Sumarni Ismail
    Engineering with Computers, 2022, 38 : 3739 - 3757
  • [32] Strength prediction of recycled concrete using hybrid artificial intelligence models with Gaussian noise addition
    Geng, Yuzheng
    Ji, Yongcheng
    Wang, Dayang
    Zhang, Hecheng
    Lu, Zhizhu
    Xing, Aotian
    Gao, Mingjie
    Chen, Maoyang
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2025, 149
  • [33] RETRACTED: An Artificial Intelligence Mechanism for the Prediction of Signal Strength in Drones to IoT Devices in Smart Cities (Retracted Article)
    Refaai, Mohamad Reda A.
    Dattu, Vinjamuri S. N. C. H.
    Murthy, H. S. Niranjana
    Kumar, P. Pramod
    Kannadasan, B.
    Diriba, Abdi
    ADVANCES IN MATERIALS SCIENCE AND ENGINEERING, 2022, 2022
  • [34] Real-world data to build explainable trustworthy artificial intelligence models for prediction of immunotherapy efficacy in NSCLC patients
    Prelaj, Arsela
    Galli, Edoardo Gregorio
    Miskovic, Vanja
    Pesenti, Mattia
    Viscardi, Giuseppe
    Pedica, Benedetta
    Mazzeo, Laura
    Bottiglieri, Achille
    Provenzano, Leonardo
    Spagnoletti, Andrea
    Marinacci, Roberto
    De Toma, Alessandro
    Proto, Claudia
    Ferrara, Roberto
    Brambilla, Marta
    Occhipinti, Mario
    Manglaviti, Sara
    Galli, Giulia
    Signorelli, Diego
    Giani, Claudia
    Beninato, Teresa
    Pircher, Chiara Carlotta
    Rametta, Alessandro
    Kosta, Sokol
    Zanitti, Michele
    Di Mauro, Maria Rosa
    Rinaldi, Arturo
    Di Gregorio, Settimio
    Antonia, Martinetti
    Garassino, Marina Chiara
    de Braud, Filippo G. M.
    Restelli, Marcello
    Lo Russo, Giuseppe
    Ganzinelli, Monica
    Trovo, Francesco
    Pedrocchi, Alessandra Laura Giulia
    FRONTIERS IN ONCOLOGY, 2023, 12
  • [35] Comparative analysis of artificial intelligence techniques for formation pressure prediction while drilling
    Abdulmalek Ahmed
    Salaheldin Elkatatny
    Abdulwahab Ali
    Abdulazeez Abdulraheem
    Arabian Journal of Geosciences, 2019, 12
  • [36] Comparative analysis of artificial intelligence techniques for formation pressure prediction while drilling
    Ahmed, Abdulmalek
    Elkatatny, Salaheldin
    Ali, Abdulwahab
    Abdulraheem, Abdulazeez
    ARABIAN JOURNAL OF GEOSCIENCES, 2019, 12 (18)
  • [37] Projection of Future Fire Emissions Over the Contiguous US Using Explainable Artificial Intelligence and CMIP6 Models
    Wang, Sally S. -C.
    Leung, L. Ruby
    Qian, Yun
    JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2023, 128 (14)
  • [38] Comparative analysis of response surface methodology and some artificial intelligence models in the prediction of methyl green degradation by Fenton process
    Taoufik, Nawal
    Boumya, Wafaa
    Achak, Mounia
    Barka, Noureddine
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL ANALYTICAL CHEMISTRY, 2023, 103 (19) : 7339 - 7356
  • [39] Comparative Analysis of Artificial Intelligence Models for Accurate Estimation of Groundwater Nitrate Concentration
    Band, Shahab S.
    Janizadeh, Saeid
    Pal, Subodh Chandra
    Chowdhuri, Indrajit
    Siabi, Zhaleh
    Norouzi, Akbar
    Melesse, Assefa M.
    Shokri, Manouchehr
    Mosavi, Amirhosein
    SENSORS, 2020, 20 (20) : 1 - 23
  • [40] Comparative analysis of artificial neural network models: Application in bankruptcy prediction
    Charalambous, C
    Charitou, A
    Kaourou, F
    ANNALS OF OPERATIONS RESEARCH, 2000, 99 (1-4) : 403 - 425