In-situ Water quality monitoring in Oil and Gas operations
- URL: http://arxiv.org/abs/2301.08800v2
- Date: Sun, 23 Jul 2023 02:04:40 GMT
- Title: In-situ Water quality monitoring in Oil and Gas operations
- Authors: Satish Kumar, Rui Kou, Henry Hill, Jake Lempges, Eric Qian, and Vikram
Jayaram
- Abstract summary: Many existing satellite-based monitoring studies utilize index-based methods to monitor large water bodies such as rivers and oceans.
We propose a new Water Quality Enhanced Index (WQEI) Model, which is designed to enable users to determine contamination levels in water bodies with weak reflectance patterns.
Our results show that 1) WQEI is a good indicator of water turbidity validated with 1200 water samples measured in the laboratory, and 2) by applying our method to commonly available satellite data (e.g. LandSat8), one can achieve high accuracy water quality monitoring efficiently in large regions.
- Score: 1.9857559596234144
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: From agriculture to mining, to energy, surface water quality monitoring is an
essential task. As oil and gas operators work to reduce the consumption of
freshwater, it is increasingly important to actively manage fresh and non-fresh
water resources over the long term. For large-scale monitoring, manual sampling
at many sites has become too time-consuming and unsustainable, given the sheer
number of dispersed ponds, small lakes, playas, and wetlands over a large area.
Therefore, satellite-based environmental monitoring presents great potential.
Many existing satellite-based monitoring studies utilize index-based methods to
monitor large water bodies such as rivers and oceans. However, these existing
methods fail when monitoring small ponds-the reflectance signal received from
small water bodies is too weak to detect. To address this challenge, we propose
a new Water Quality Enhanced Index (WQEI) Model, which is designed to enable
users to determine contamination levels in water bodies with weak reflectance
patterns. Our results show that 1) WQEI is a good indicator of water turbidity
validated with 1200 water samples measured in the laboratory, and 2) by
applying our method to commonly available satellite data (e.g. LandSat8), one
can achieve high accuracy water quality monitoring efficiently in large
regions. This provides a tool for operators to optimize the quality of water
stored within surface storage ponds and increasing the readiness and
availability of non-fresh water.
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