Prediction of growth trend and application of Synechococcus PCC7002 in industrial culture based on MTS-Mixers
Vol 7, Issue 2, 2024
VIEWS - 48 (Abstract) 90 (PDF)
Abstract
PCC7002 was selected as the culture object in the pilot stage of the culture, and a variety of parameters in the culture process were collected
and a data set was established. A growth prediction model of synechococcus PCC7002 based on LSTM neural network was constructed. Mul_x005ftiple environmental parameters, such as temperature, pH, light intensity, air input and dissolved oxygen value, were used as input parameters
of the model. After repeated training and learning, turbidity value (i.e., cell concentration) of the growth state of microalgae was obtained.
The turbidity value of quantifiable microalgae growth conditions and the growth trend of PCC7002 were obtained after the coupled training
of the main environmental factors in the microalgae culture process. Then, the MTS-Mixers algorithm was integrated to predict the external
environment prediction curve required for the growth of microalgae in the stable and exponential stages in the culture process.
Keywords
Full Text:
PDFReferences
1. [1] Zhilan ChenYun TianChenhong Zhu et al. Sensitive detection of oxidative DNA damage in cyanobacterial cells using su_x005fpercoiling-sensitive quantitative PCR[J]. Chemosphere 2018 211: 164-172.
2. [2] Ryan L. Clark,Laura L. McGinley,Hugh M. Purdy, et al. Light-optimized growth of cyanobacterial cultures: Growth phases
3. and productivity of biomass and secreted molecules in light-limited batch growth[J]. Metabolic Engineering, 2018, 47: 230-242.
4. [3] Zhe Li,Zhongwen Rao,Lujia Pan, et al. MTS-Mixers: Multivariate Time Series Forecasting via Factorized Temporal and
5. Channel Mixing[J]. Machine Learning, 2023: 1-14.
6. [4] Noguchi R, Ahamed T, Rani D S, et al. Artificial neural networks model for estimating growth of polyculture microalgae in an
7. open raceway pond[J]. Biosystems Engineering, 2019, 177: 122-129.
8. [5] Hochreiter, S, and J. Schmidhuber. “Long short-term memory.” Neural Computation 9.8(1997):1735-1780.
9. [6] Gers F A, Schmidhuber J, Cummins F. Learning to forget: Continual prediction with LSTM[J]. 1999.
DOI: https://doi.org/10.18686/ijmss.v7i2.4721
Refbacks
- There are currently no refbacks.
This site is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.