Publication Details

AFRICAN RESEARCH NEXUS

SHINING A SPOTLIGHT ON AFRICAN RESEARCH

engineering

Prediction of Escherichia coli Bacterial and Coliforms on Plants through Artificial Neural Network

Advances in Materials Science and Engineering, Volume 2022, Article 9793790, Year 2022

The researchers investigated the efficiency of several disinfectants in reducing coliforms and Escherichia coli rates on carrots and lettuce, as well as using ANN to calculate the bacteria on the edible plants. Fresh greens leaves are cleaned and dried in sterile water. Vaccinated leafy greens vegetables were immersed in a vessel and treated with chlorine, and we choose plant extracts to evaluate the impact of the extraction. The pH measurement was evaluated for both acids. After each treatment type was held at 4°C for 0, 1, 5, and 7 days, respectively, cumulative bacterial counts were evaluated. The quantity of surviving coliforms and Escherichia coli on lettuce was decreased by roughly 2-3 log 10 cfu/g (p 0.05) as the hypochlorite acids concentration is higher, compared to just about 1 log 10 cfu/g decrease on carrots. However, whenever the PA level is higher, the bacterium rates on carrots significantly decreased by 3-4 log 10 cfu/g (p>0.05), whereas the rates on lettuce leaves have only been lowered. The highest summation squared errors for remaining coliforms and E. coli via neural predictions were 0.40 and 0.64, correspondingly, while the highest regression analysis for remnant coliforms and E. coli was 0.95 and 0.82, including both.
Statistics
Citations: 18
Authors: 9
Affiliations: 8
Identifiers
Research Areas
Environmental
Study Approach
Quantitative