Machine learning for microalgae detection and utilization
TL;DR: The paper summarizes recent advances based on various machine learning algorithms in microalgae applications, such asmicroalgae classification, bioenergy generation fromMicroalgae, environment purification with micro algae, and microalgai growth monitor, and prospect development of machine learning algorithm in micro algae treatment in the future are prospected.
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Abstract: Microalgae are essential parts of marine ecology, and they play a key role in species balance. Microalgae also have significant economic value. However, microalgae are too tiny, and there are many different kinds of microalgae in a single drop of seawater. It is challenging to identify microalgae species and monitor microalgae changes. Machine learning techniques have achieved massive success in object recognition and classification, and have attracted a wide range of attention. Many researchers have introduced machine learning algorithms into microalgae applications, and similarly significant effects are gained. The paper summarizes recent advances based on various machine learning algorithms in microalgae applications, such as microalgae classification, bioenergy generation from microalgae, environment purification with microalgae, and microalgae growth monitor. Finally, we prospect development of machine learning algorithms in microalgae treatment in the future.
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