| Literature DB >> 34277590 |
Jiang Yanbo1,2, Jiang Jianyi1, Wei Xiandong1, Ling Wei1, Jiang Lincheng3.
Abstract
With the development of modern chemical synthesis technology, toxic and harmful compounds increase sharply. In order to improve the removal efficiency of refractory organic matter in waste water, the method of adding powdered activated carbon (PAC) to the system for adsorption was adopted. Through the analysis of organic matter removal rule before and after waste water treatment, it can be found that PAC is easy to adsorb hydrophobic organic matter, while activated sludge is easy to remove hydrophilic and weakly hydrophobic neutral organic matter. Powdered activated carbon-activated sludge SBR system (PAC-AS) system is obviously superior to AS and PAC system in removing organic matter of hydrophilic and hydrophobic components, that is, biodegradation and PAC adsorption are additive. Compared with the control system, the Chemical Oxygen Demand (COD) removal rate of refractory substances increased by 8.36%, and PAC had a good adsorption effect on small molecular weight organic compounds, but with the increase of molecular weight of organic compounds, the adsorption effect of PAC gradually weakened, and it had no adsorption effect on macromolecular organic compounds. Based on the research of fuzzy control theory, an Agent control system for ozone oxidation process of industrial waste water based on Mobile Agent Server (MAS) theory was established, which was realized by fuzzy control method. The simulation results showed strong stability and verified the feasibility and adaptability of the distributed intelligent waste water treatment system based on MAS theory in the actual control process.Entities:
Keywords: artificial intelligence; biofortification; fuzzy neural network; intelligent control; waste water treatment
Year: 2021 PMID: 34277590 PMCID: PMC8283819 DOI: 10.3389/fbioe.2021.696166
Source DB: PubMed Journal: Front Bioeng Biotechnol ISSN: 2296-4185
FIGURE 1Mobile Agent Server (MAS) structure of distributed control system.
FIGURE 2Information processing flow of MAS task dispatching in distributed control system.
FIGURE 3Fuzzy neural network control simulation system.
Operation of simulated waste water treatment by biological enhancement.
| 1 | 20% glucose + 0.25 mg/L Fe3+ | 456.33 | 387.01 | 48.36 | 88.01 | 2.6 | 0.55 | 2.1 |
| 2 | 20% rice washing water + 0.25 mg/L Fe3+ | 458.01 | 379.05 | 25.58 | 93.14 | 2.4 | 0.52 | 2.8 |
| 3 | Contrast | 389.36 | 381.25 | 55.33 | 86.33 | 1.7 | 0.56 | 2.4 |
FIGURE 4Effect of adding glucose on COD removal rate.
FIGURE 6Change curve of COD removal rate of control system.
FIGURE 7Comparison of molecular weight distribution of organic matter in waste water before and after treatment.
FIGURE 8Changes of hydrophilicity and hydrophobicity of organic matter before and after waste water treatment.
Removal effect of organic matter in waste water by classification of hydrophilicity and hydrophobicity.
| HPO-N | ++ | + | ++ |
| TPI-A | ++ | - | + |
| TPI-N | + | + | + |
| HPI | ++ | ++ | + |
FIGURE 9Output control curve of dissolved oxygen concentration.
FIGURE 10Output control curve of dissolved oxygen concentration.