Chun Ting Sie, Malek M A, Ismail Amelia Ritahani
Department of Civil Engineering, Universiti Tenaga Nasional, IKRAM-UNITEN Road, 43000 Kajang, Selangor, Malaysia.
Environ Sci Process Impacts. 2014 Sep 20;16(9):2208-14. doi: 10.1039/c4em00282b. Epub 2014 Jul 9.
Effluent discharge from septic tanks is affecting the environment in developing countries. The most challenging issue facing these countries is the cost of inadequate sanitation, which includes significant economic, social, and environmental burdens. Although most sanitation facilities are evaluated based on their immediate costs and benefits, their long-term performance should also be investigated. In this study, effluent quality-namely, the biological oxygen demand (BOD), chemical oxygen demand (COD), and total suspended solid (TSS)-was assessed using a biomimetics engineering approach. A novel immune network algorithm (INA) approach was applied to a septic sludge treatment plant (SSTP) for effluent-removal predictive modelling. The Matang SSTP in the city of Kuching, Sarawak, on the island of Borneo, was selected as a case study. Monthly effluent discharges from 2007 to 2011 were used for training, validating, and testing purposes using MATLAB 7.10. The results showed that the BOD effluent-discharge prediction was less than 50% of the specified standard after the 97(th) month of operation. The COD and TSS effluent removals were simulated at the 85(th) and the 121(st) months, respectively. The study proved that the proposed INA-based SSTP model could be used to achieve an effective SSTP assessment and management technique.
化粪池排放的污水正在影响发展中国家的环境。这些国家面临的最具挑战性的问题是卫生设施不足的成本,其中包括巨大的经济、社会和环境负担。尽管大多数卫生设施是根据其直接成本和效益来评估的,但它们的长期性能也应进行调查。在本研究中,采用仿生工程方法评估了污水质量,即生物需氧量(BOD)、化学需氧量(COD)和总悬浮固体(TSS)。一种新颖的免疫网络算法(INA)方法被应用于化粪池污泥处理厂(SSTP)的污水去除预测建模。位于婆罗洲岛沙捞越州古晋市的马唐SSTP被选为案例研究。使用MATLAB 7.10,将2007年至2011年的每月污水排放用于训练、验证和测试目的。结果表明,在运行第97个月后,BOD污水排放预测低于规定标准的50%。COD和TSS污水去除率分别在第85个月和第121个月进行了模拟。该研究证明,所提出的基于INA的SSTP模型可用于实现有效的SSTP评估和管理技术。