Bridging artificial intelligence and fucoxanthin for the recovery and quantification from microalgae DOI Open Access
Jun Wei Roy Chong, Doris Ying Ying Tang, Hui Yi Leong

et al.

Bioengineered, Journal Year: 2023, Volume and Issue: 14(1)

Published: Aug. 14, 2023

Fucoxanthin is a carotenoid that possesses various beneficial medicinal properties for human well-being. However, the current extraction technologies and quantification techniques are still lacking in terms of cost validation, high energy consumption, long time, low yield production. To date, artificial intelligence (AI) models can assist improvise bottleneck fucoxanthin process by establishing new processes which involve big data, digitalization, automation efficiency This review highlights application AI such as neural network (ANN) adaptive neuro fuzzy inference system (ANFIS), capable learning patterns relationships from large datasets, capturing non-linearity, predicting optimal conditions significantly impact yield. On top that, combining metaheuristic algorithm genetic (GA) further improve parameter space discovery ANN ANFIS models, results R2 accuracy ranging 98.28% to 99.60% after optimization. Besides, support vector machine (SVM), convolutional networks (CNNs), have been leveraged fucoxanthin, either computer vision based on color images or regression analysis statistical data. The findings reliable when modeling concentration pigments with 66.0% − 99.2%. paper has reviewed feasibility potential purposes, reduce cost, accelerate yields, development fucoxanthin-based products.

Language: Английский

Use, Potential, Needs, and Limits of AI in Wastewater Treatment Applications DOI Open Access
Andrea G. Capodaglio, Arianna Callegari

Water, Journal Year: 2025, Volume and Issue: 17(2), P. 170 - 170

Published: Jan. 10, 2025

Artificial intelligence (AI) uses highly powerful computers to mimic human intelligent behavior; it is a major research hotspot in science and technology, with an increasing number of applications wider range fields, including complex process supervision control. Wastewater treatment example involving many uncertainties external factors achieve final product specific requisites (effluents prescribed quality). Reducing energy consumption, greenhouse gas emissions, resources recovery are additional requirements these facilities’ operation. AI could extend the purpose expected results previously adopted tools present operational approaches by leveraging superior simulation, prediction, control, adaptation capabilities. This paper reviews current wastewater field discusses achievements potentials. So far, almost all sector involve predictive studies, often at small scale or limited data use. Frontline aimed creation AI-supported digital twins real systems being conducted, few encouraging but still applications. aims identifying discussing key barriers adoption field, which include laborious instrumentation maintenance, lack expertise design software, instability control loops, insufficient incentives for resource efficiency achievement.

Language: Английский

Citations

2

Towards a Sustainable Circular Economy: Algae‐Based Bioplastics and the Role of Internet‐of‐Things and Machine Learning DOI Creative Commons
Abu Danish Aiman Bin Abu Sofian, Hooi Ren Lim, Sivakumar Manickam

et al.

ChemBioEng Reviews, Journal Year: 2023, Volume and Issue: 11(1), P. 39 - 59

Published: Nov. 6, 2023

Abstract The growing potential of sustainable materials such as polyhydroxyalkanoates (PHAs), polylactic acid (PLA), alginate, carrageenan, and ulvan for bioplastics production presents an opportunity to promote a circular economy. This review investigates their properties, applications, challenges. Bioplastics derived from algae offer environmentally friendly alternative petroleum‐based plastics, shift paramount importance society due the escalating environmental concerns associated with traditional plastics. role internet‐of‐things (IoT) machine learning in refining these bioplastics' development processes is emphasized. IoT monitors cultivation conditions, data collection, process control more production. Machine can enhance cultivation, increasing supply raw algal improving efficiency output. study results indicate promise algae‐based bioplastics, IoT, fostering future. By harnessing advanced technologies, optimization bioplastic possible, potentially revolutionizing industry addressing existing challenges toward achieving

Language: Английский

Citations

28

Ensuring carbon neutrality via algae-based wastewater treatment systems: Progress and future perspectives DOI
Amit Kumar, Saurabh Mishra, Nitin Kumar Singh

et al.

Journal of Environmental Management, Journal Year: 2024, Volume and Issue: 360, P. 121182 - 121182

Published: May 20, 2024

Language: Английский

Citations

14

Adsorption of Cr(VI) ions onto fluorine-free niobium carbide (MXene) and machine learning prediction with high precision DOI

Rehan Ishtiaq,

Nallain Zahra,

Sara Iftikhar

et al.

Journal of environmental chemical engineering, Journal Year: 2024, Volume and Issue: 12(2), P. 112238 - 112238

Published: Feb. 17, 2024

Language: Английский

Citations

13

How tech companies advance sustainability through artificial intelligence: Developing and evaluating an AI x Sustainability strategy framework DOI Creative Commons
Felix Zechiel, Marah Blaurock, Ellen Weber

et al.

Industrial Marketing Management, Journal Year: 2024, Volume and Issue: 119, P. 75 - 89

Published: April 17, 2024

Sustainability is at the top of agenda most tech companies. Specifically, companies increasingly utilize artificial intelligence (AI) to meet their sustainability goals. However, little known about how can leverage AI accelerate by formulating and implementing appropriate strategies. To better understand intertwined nature from a strategy perspective, this research conceptually develops novel x framework drawing nested model integrating insights different literature streams. It then applies six leading Big Tech (i.e., Amazon, Google, IBM, Meta, Microsoft, SAP) conducting comprehensive document analysis 69 documents describing 244 individual initiatives reveal whether these appear follow specific Lastly, an exploratory survey with potential companies' clients (N = 192) sheds light on perceive communicated strategic positioning based framework. The provides new theoretical insights, serves as blueprint for other companies, including implications positioning, offers variety future directions.

Language: Английский

Citations

10

Artificial intelligence and machine learning for the optimization of pharmaceutical wastewater treatment systems: a review DOI Creative Commons
Voravich Ganthavee, Antoine P. Trzcinski

Environmental Chemistry Letters, Journal Year: 2024, Volume and Issue: 22(5), P. 2293 - 2318

Published: May 21, 2024

Abstract The access to clean and drinkable water is becoming one of the major health issues because most natural waters are now polluted in context rapid industrialization urbanization. Moreover, pollutants such as antibiotics escape conventional wastewater treatments thus discharged ecosystems, requiring advanced techniques for treatment. Here we review use artificial intelligence machine learning optimize pharmaceutical treatment systems, with focus on quality, disinfection, renewable energy, biological treatment, blockchain technology, algorithms, big data, cyber-physical automated smart grid power distribution networks. Artificial allows monitoring contaminants, facilitating data analysis, diagnosing easing autonomous decision-making, predicting process parameters. We discuss advances technical reliability, energy resources management, cyber-resilience, security functionalities, robust multidimensional performance platform distributed consortium, stabilization abnormal fluctuations quality

Language: Английский

Citations

10

Development of an artificial neural network (ANN) for the prediction of a pilot scale mobile wastewater treatment plant performance DOI
Walter M. Warren‐Vega,

Kevin D. Montes-Pena,

Luis A. Romero‐Cano

et al.

Journal of Environmental Management, Journal Year: 2024, Volume and Issue: 366, P. 121612 - 121612

Published: July 5, 2024

Language: Английский

Citations

10

Wastewater recycling and groundwater sustainability through self-organizing map and style based generative adversarial networks DOI

B Varasree,

V Kavithamani,

Prithvi Chandrakanth

et al.

Groundwater for Sustainable Development, Journal Year: 2024, Volume and Issue: 25, P. 101092 - 101092

Published: Jan. 13, 2024

Language: Английский

Citations

9

Insights into levofloxacin adsorption with machine learning models using nano-composite hydrochars DOI
Alaa El Din Mahmoud,

Radwa Hassan Ali,

Manal Fawzy

et al.

Chemosphere, Journal Year: 2024, Volume and Issue: 355, P. 141746 - 141746

Published: March 22, 2024

Language: Английский

Citations

9

Integrated response surface and machine learning approach: Experimental optimization and DFT analysis for NaN3 removal via NaClO oxidation DOI

Yunfeng Tan,

Jiangzhou Qin,

Shengquan Chang

et al.

Journal of Water Process Engineering, Journal Year: 2025, Volume and Issue: 70, P. 107067 - 107067

Published: Jan. 23, 2025

Language: Английский

Citations

1