Continuous monitoring of suspended sediment concentrations using image analytics and deriving inherent correlations by machine learning
Mahmood Shahabi; Heikki Ruskeepää; Bellie Sivakumar; Mohammad Ali Ghorbani; Sungwon Kim; Saeed Samadianfard; Rasoul Jani; Ercan Kahya; Farzin Salmasi; Rahman Khatibi; Mandeep Kaur Saggi; Mahsa Hasanpour Kashani; Vijay P. Singh
Continuous monitoring of suspended sediment concentrations using image analytics and deriving inherent correlations by machine learning
Mahmood Shahabi
Heikki Ruskeepää
Bellie Sivakumar
Mohammad Ali Ghorbani
Sungwon Kim
Saeed Samadianfard
Rasoul Jani
Ercan Kahya
Farzin Salmasi
Rahman Khatibi
Mandeep Kaur Saggi
Mahsa Hasanpour Kashani
Vijay P. Singh
NATURE PUBLISHING GROUP
Julkaisun pysyvä osoite on:
https://urn.fi/URN:NBN:fi-fe2021042822818
https://urn.fi/URN:NBN:fi-fe2021042822818
Tiivistelmä
The barriers for the development of continuous monitoring of Suspended Sediment Concentration (SSC) in channels/rivers include costs and technological gaps but this paper shows that a solution is feasible by: (i) using readily available high-resolution images; (ii) transforming the images into image analytics to form a modelling dataset; and (iii) constructing predictive models by learning inherent correlation between observed SSC values and their image analytics. High-resolution images were taken of water containing a series of SSC values using an exploratory flume. Machine learning is processed by dividing the dataset into training and testing sets and the paper uses the following models: Generalized Linear Machine (GLM) and Distributed Random Forest (DRF). Results show that each model is capable of reliable predictions but the errors at higher SSC are not fully explained by modelling alone. Here we offer sufficient evidence for the feasibility of a continuous SSC monitoring capability in channels before the next phase of the study with the goal of producing practice guidelines.
Kokoelmat
- Rinnakkaistallenteet [19206]