Intelligent Bioremediation In The Industry 5.0 Era

Authors

  • Aryan Arya, Chhavi Gyanani, Mohit Kumar, Ayan Hussain

Keywords:

Intelligent bioremediation; Industry 5.0; synthetic microbial consortia; artificial intelligence; IoT biosensors; adaptive process control; mixed pollutants

Abstract

Background: Conventional bioremediation approaches suffer from unpredictable efficacy, slow kinetics, and lack of real-time adaptive control in complex industrial environments. The convergence of Industry 5.0 technologies with advanced biotechnology presents an unprecedented opportunity to create autonomous, self-optimizing remediation systems.

Objective: This study aimed to develop and validate an integrated intelligent bioremediation platform combining (i) AI-guided synthetic microbial consortia design, (ii) IoT-enabled biosensor networks for real-time monitoring, and (iii) adaptive process control algorithms for autonomous optimization of mixed pollutant degradation.

Methods: A synthetic microbial consortium comprising three engineered strains (Pseudomonas putida KT2440-AB, Rhodococcus erythropolis PR4-PAH, and Cupriavidus metallidurans CH34-HM) was constructed using metabolic engineering and validated for simultaneous degradation of hydrocarbons, polycyclic aromatic hydrocarbons (PAHs), and heavy metals. A Random Forest-based AI model (RF-BioOpt) was trained on 357 experimental data points to predict optimal process parameters. An IoT biosensor array monitoring pH, dissolved oxygen, ORP, and pollutant concentrations was integrated with a programmable logic controller (PLC) for adaptive feedback control. Performance was evaluated in 15 L sequencing batch bioreactors treating simulated industrial wastewater over 45 operational cycles.

Results: The AI-optimized consortium achieved 94.3% total petroleum hydrocarbon (TPH) degradation, 89.7% PAH removal, and 82.5% Pb²⁺ biosorption within 72 hours under AI-determined optimal conditions (C/N ratio 16.4:1, DO 3.8 mg/L, pH 7.2, temperature 32.5°C). Real-time IoT monitoring enabled dynamic adjustment of aeration and nutrient dosing, reducing operational costs by 31.2% compared to fixed-parameter operation. The RF-BioOpt model demonstrated high predictive accuracy (R² = 0.978, RMSE = 0.042). Metagenomic analysis revealed stable consortium composition with <5% population drift over 45 cycles.

Conclusion: The integrated intelligent bioremediation platform successfully demonstrated autonomous, efficient, and stable degradation of mixed industrial pollutants, validating the Industry 5.0 paradigm of human-centric, sustainable, and resilient environmental biotechnology. This study provides a scalable framework for next-generation industrial wastewater treatment and contaminated site restoration.

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How to Cite

Aryan Arya, Chhavi Gyanani, Mohit Kumar, Ayan Hussain. (2026). Intelligent Bioremediation In The Industry 5.0 Era. International Journal of Research & Technology, 14(1), 737–752. Retrieved from https://ijrt.org/j/article/view/1135

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