| Literature DB >> 33313556 |
S Shibata1, R Mizuno1, H Mineno2,3.
Abstract
The optimal control of sugar content and its associated technology is important for producing high-quality crops more stably and efficiently. Model-based reinforcement learning (RL) indicates a desirable action depending on the type of situation based on trial-and-error calculations conducted by an environmental model. In this paper, we address plant growth modeling as an environmental model for the optimal control of sugar content. In the growth process, fruiting plants generate sugar depending on their state and evolve via various external stimuli; however, sugar content data are sparse because appropriate remote sensing technology is yet to be developed, and thus, sugar content is measured manually. We propose a semisupervised deep state-space model (SDSSM) where semisupervised learning is introduced into a sequential deep generative model. SDSSM achieves a high generalization performance by optimizing the parameters while inferring unobserved data and using training data efficiently, even if some categories of training data are sparse. We designed an appropriate model combined with model-based RL for the optimal control of sugar content using SDSSM for plant growth modeling. We evaluated the performance of SDSSM using tomato greenhouse cultivation data and applied cross-validation to the comparative evaluation method. The SDSSM was trained using approximately 500 sugar content data of appropriately inferred plant states and reduced the mean absolute error by approximately 38% compared with other supervised learning algorithms. The results demonstrate that SDSSM has good potential to estimate time-series sugar content variation and validate uncertainty for the optimal control of high-quality fruit cultivation using model-based RL.Entities:
Year: 2020 PMID: 33313556 PMCID: PMC7706328 DOI: 10.34133/2020/4261965
Source DB: PubMed Journal: Plant Phenomics ISSN: 2643-6515
Figure 1Graphical representations of proposed models.
Figure 2Experimental environment.
Variables in the proposed models.
| Variable | Cont-SDSSM | Disc-SDSSM | 2L-SDSSM |
|---|---|---|---|
|
| Sugar content | Sugar content | Sugar content |
|
| Stem diameter | Stem diameter | Stem diameter |
|
| Temperature, solar radiation, VPD, elapsed date1, accumulated temperature2 | Elapsed date1, accumulated temperature2 | Temperature, solar radiation, VPD |
|
| — | — | Elapsed date1, accumulated temperature2 |
|
| CO2 concentration, solar radiation, step ID | CO2 concentration, solar radiation, step ID | CO2 concentration, solar radiation, step ID |
1Number of days after flowering. 2Summation of daily temperatures from the flowering date to the present.
Figure 3Overview of information flow at time step t of the proposed models.
Figure 4Network architectures showing each neural network in the proposed models.
Data used for cross-validation.
| Dataset pattern | Training (data size (labeled size) (cultivation bed no.)) | Validation (data size (labeled size) (cultivation bed no.)) | Test (data size (labeled size) (cultivation bed no.)) |
|---|---|---|---|
| A | 2,241 (382) (3, 4, 5, 6, 7, 11, 13, 14, 15) | 747 (123) (8, 12, 16) | 996 (167) (1, 2, 9, 10) |
| B | 2,241 (345) (1, 5, 7, 8, 9, 13, 14, 15, 16) | 747 (131) (2, 6, 10) | 996 (154) (3, 4, 11, 12) |
| C | 2,241 (361) (1, 2, 3, 4, 7, 9, 10, 11, 15) | 747 (123) (8, 12, 16) | 996 (189) (5, 6, 13, 14) |
| D | 2,241 (381) (1, 3, 4, 5, 9, 11, 12, 13, 14) | 747 (131) (2, 6, 10) | 996 (161) (7, 8, 15, 16) |
Figure 5Error indicators of Cont-SV, Cont-SSV, Disc-SV, Disc-SSV, 2L-SV, 2L-SSV, MLP, and sLSTM.
Figure 6True and estimated values of the sugar content (brix) with the standard deviations for supervised SDSSMs, semisupervised SDSSMs, MLP, and sLSTM.
Figure 7Scatter plots of standard deviations and absolute errors of supervised SDSSMs and semisupervised SDSSMs.
Figure 8Scatter plots showing principal components and stem diameter or DSD.