March 18, 2021
Journal Article

Real-Time Ensemble Microalgae Growth Forecasting with Data Assimilation

Abstract

Accurate short-range (e.g., 7-day) microalgae growth forecasts will be beneficial for both production and harvesting of microalgae. This study developed an operational microalgae growth forecasting system with ensemble data assimilation (DA). The forecasting system was validated against observed Monoraphidium minutum 26B-AM growth in two outdoor pond cultures located in Mesa, Arizona, U.S. We first examined the relative roles of uncertainty in the meteorological forecast and initial conditions (i.e., algal concentration at the time of forecast) in the microalgae 7-day forecast and found initial conditions dominated the microalgae forecasting skill, suggesting the importance of implementing DA to improve initial condition characterization. To correct the systematic bias in biomass simulations, we developed a particle filter with bias estimation (PFBE) DA method to estimate biases and correct the model forecast. We found the DA forecasting system could improve the 7-day microalgae forecasting skill by about 85% on average compared to model forecasts without DA. These results suggest the potential accuracy of biomass growth forecasts may be sufficient to inform real-time operational decisions, such as harvesting planning, for commercial-scale microalgae production.

Published: March 18, 2021

Citation

Yan H., M.S. Wigmosta, N. Sun, M.H. Huesemann, and S. Gao. 2021. Real-Time Ensemble Microalgae Growth Forecasting with Data Assimilation. Biotechnology and Bioengineering 118, no. 3:1419-1424. PNNL-SA-153734. doi:10.1002/bit.27663