Artificial Neural Networks in Membrane Bioreactors: A Comprehensive Review—Overcoming Challenges and Future Perspectives

Decis. Sci. Pub Date : 2023-08-15 DOI:10.3390/sci5030031
Z. Frontistis, Grigoris Lykogiannis, Anastasios Sarmpanis
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Abstract

Among different biological methods used for advanced wastewater treatment, membrane bioreactors have demonstrated superior efficiency due to their hybrid nature, combining biological and physical processes. However, their efficient operation and control remain challenging due to their complexity. This comprehensive review summarizes the potential of artificial neural networks (ANNs) to monitor, simulate, optimize, and control these systems. ANNs show a unique ability to reveal and simulate complex relationships of dynamic systems such as MBRs, allowing for process optimization and fault detection. This early warning system leads to increased reliability and performance. Integrating ANNs with advanced algorithms and implementing Internet of Things (IoT) devices and new-generation sensors has the potential to transform the advanced wastewater treatment landscape towards the development of smart, self-adaptive systems. Nevertheless, several challenges must be addressed, including the need for high-quality and large-quantity data, human resource training, and integration into existing control system facilities. Since the demand for advanced water treatment and water reuse will continue to expand, proper implementation of ANNs, combined with other AI tools, is an exciting strategy toward the development of integrated and efficient advanced water treatment schemes.
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人工神经网络在膜生物反应器中的应用综述——克服挑战与展望
在各种用于污水深度处理的生物方法中,膜生物反应器由于其结合生物和物理过程的混合性而表现出优越的效率。然而,由于其复杂性,有效的操作和控制仍然具有挑战性。本文综述了人工神经网络(ANNs)在监测、模拟、优化和控制这些系统方面的潜力。人工神经网络显示出一种独特的能力,可以揭示和模拟动态系统(如mbr)的复杂关系,从而实现过程优化和故障检测。这种早期预警系统提高了可靠性和性能。将人工神经网络与先进的算法集成,并实施物联网(IoT)设备和新一代传感器,有可能将先进的废水处理领域转变为智能、自适应系统的发展。然而,必须解决若干挑战,包括对高质量和大量数据的需求、人力资源培训以及与现有控制系统设施的集成。由于对高级水处理和水回用的需求将继续扩大,适当实施人工神经网络,结合其他人工智能工具,是开发综合高效高级水处理方案的一项令人兴奋的战略。
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