{"id":"W4407410870","doi":"10.36548/jismac.2024.4.007","title":"AI-Driven Unified Channel Management in Cognitive Radio IoT Networks: Integration of OFDM, SDN, MRC, RIS, and Cloud Computing","year":2025,"lang":"en","type":"article","venue":"Journal of ISMAC","topic":"Advanced Wireless Communication Technologies","field":"Engineering","cited_by":2,"is_retracted":false,"has_abstract":true,"ca_institutions":"Research Canada","funders":"","keywords":"Cognitive radio; Cloud computing; Orthogonal frequency-division multiplexing; Channel (broadcasting); Internet of Things; Computer science; Computer network; Telecommunications; Computer security; Wireless; Operating system","routes":{"ca_aff":true,"ca_fund":false,"ca_venue":false,"about_ca":false,"invisible_to_affiliation_only":false},"retraction":null,"screen":null,"direct_labels":[],"prediction":{"model_version":"codex-gemma-dda1882f352a","candidate_categories":[],"consensus_categories":[],"category_scores_codex":[0.0001989085,0.00009449561,0.0002338384,0.0003336088,0.00002802312,0.00001246671,0.0001959917,0.00006847036,0.000001539728],"category_scores_gemma":[0.00004587848,0.00009122121,0.00003417446,0.0003397422,0.00005263705,0.00008239612,0.00008780548,0.0003815812,2.233817e-7],"about_ca_system_candidate":false,"about_ca_system_consensus":false,"about_ca_system_score_codex":0.00007761039,"about_ca_system_score_gemma":0.000008248153,"about_ca_topic_candidate":false,"about_ca_topic_consensus":false,"about_ca_topic_score_codex":0.000003402414,"about_ca_topic_score_gemma":0.00001129453,"domain_scores_codex":[0.9992779,0.00003617023,0.000435776,0.00006287944,0.00008006298,0.0001071926],"domain_scores_gemma":[0.999442,0.0001363662,0.0001796376,0.0001249682,0.00009986989,0.00001718004],"domain_codex":null,"domain_gemma":null,"domain_candidate":null,"domain_consensus":null,"study_design_codex":"simulation_or_modeling","study_design_gemma":"simulation_or_modeling","study_design_scores_codex":[0.00006328551,0.00005400524,0.0005285091,0.0001085949,0.0002173468,0.00001262075,0.0007281425,0.8075596,0.001018714,0.004346694,0.0009323799,0.1844301],"study_design_scores_gemma":[0.002306802,0.0001112188,0.01139609,0.002579036,0.0000688945,0.00001625339,0.006459068,0.9588057,0.0125105,0.00481618,0.0006918792,0.0002383177],"study_design_candidate":"simulation_or_modeling","study_design_consensus":"simulation_or_modeling","genre_codex":"methods","genre_gemma":"empirical","genre_scores_codex":[0.2586888,0.003657166,0.7361046,0.0005076833,0.0002929304,0.0001653051,0.000001424466,0.00006559148,0.0005164458],"genre_scores_gemma":[0.9897687,0.003338251,0.00678106,0.000053012,0.00003145224,0.000002045288,0.000001753049,0.000008927319,0.00001472638],"genre_candidate":"empirical","genre_consensus":null,"teacher_disagreement_score":0.7310799,"threshold_uncertainty_score":0.3719893,"prediction_status":"machine_predicted_unvalidated"},"machine_scores":{"provisional":true,"baseline":true,"maturity_gate_passed":false,"score_opus":0.01332794764337666,"score_gpt":0.2719299987467333,"score_spread":0.2586020511033567,"validation_status":"score_only:v0-immature-baseline","note":"Baseline scores from an immature model (maturity gate not passed). Scores rank; they never assert a category."}}