Applications of machine learning algorithms for biological wastewater treatment: Updates and perspectives
Creators
- 1. National Taiwan University
- 2. UNESCO-IHE Institute for Water Education
- 3. National University of Mongolia
Description
Biological wastewater treatment using algae–bacteria consortia for nutrient uptake and resource recovery is a 'paradigm shift' from the mainstream wastewater treatment process to mitigate pollution and promote circular economy. The symbiotic relationship between algae and bacteria is complex in open or closed biological wastewater treatment systems. In this regard, machine learning algorithms (MLAs) have found to be advantageous to predict the uncertain performances of the treatment processes. MLAs have shown satisfactory results for effective real-time monitoring, optimization, prediction of uncertainties and fault detection of complex environmental systems. By incorporating these algorithms with online sensors, the transient operating conditions during the treatment process including disruptions or failures due to leaking pipelines, malfunctioning of bioreactors, unexpected fluctuations of organic loadings, flow rate, and temperature can be forecasted efficiently. This paper reviews the state-of-the-art MLA approaches for the integrated operation of biological wastewater treatment systems combining algal biomass production and nutrient recovery from municipal wastewater.
Publication Details
Journal article
Journal:
Clean Technologies and Environmental Policy
Publisher:
Springer Science and Business Media LLC
ISSN:
1618954x
Volume:
23
Pages:
127-143
Persistent Identifiers
DOI
10.1007/s10098-020-01993-x
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MAGID
3118670782
References
Moreno-Garrido I (2008) Microalgae immobilization: current techniques and uses. ...
Read more
de Assis LR, Calijuri ML, Assemany PP, Berg EC, Febroni LV, Bartolomeu TA (2019)...
Read more
Calder\u00f3n OAR, Abdeldayem OM, Pugazhendhi A, Rene ER (2020) Current updates ...
Read more
del Rio-Chanona EA, Wagner JL, Ali H, Fiorelli F, Zhang D, Hellgardt K (2019) De...
Read more
Mamandipoor B, Majd M, Sheikhalishahi S, Modena C, Osmani V (2020) Monitoring an...
Read more
Showing first 5 of 119 references.