Winter Water Quality Modeling in Xiong’an New Area Supported by Hyperspectral Observation
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Study Area
2.2. Sensor and Data Processing
2.3. Algorithms
2.4. Accuracy Evaluation
3. Results
3.1. Calculation Results
3.2. Mapping
- Spatial distribution of COD (Figure 4a) [50]. The range of content in channel segment A is between 1.00 and 33.75 mg/L, with an average content of 16.55 mg/L. At the east–west and south–north halves of the river course, the content of COD is relatively low, ranging from 11.00 to 17.73 mg/L. The high content appears downstream near Baiyang Lake and reaches the peak at the south–north half, then slowly decreases, and the content at the north side of the sluice further decreases to the low level. The content value range of channel segment B is between 1.58 and 13.00 mg/L, with an average content of 4.77 mg/L. The closer to the bank, the higher the content of COD, between 7.24 and 1.16 mg/L, and the lower the content in the middle of the river. An obviously high-value area appears in the area where the river meets, and the north is close to the powerhouse. It is speculated that it is caused by the adverse emission or diffusion of certain pollutants. The content range of channel segment C is between 0.10 and 22.00 mg/L, with an average content of 8.23 mg/L. The closer to the bank, the higher the content of COD, which is between 9.89 and 18.56 mg/L, and the lower the content in the middle of the river. There is an obviously high-value area near the living area of residents. It is speculated that it is caused by the adverse emission or diffusion of certain pollutants. The content range of channel segment D is between 4.06 and 5.56 mg/L, with an average content of 4.38 mg/L. In the west of the channel, the content of COD is relatively high, ranging from 4.79 to 5.10 mg/L, while in the east of the channel, the content is relatively low. There is an obvious high-value area near the residential and the riverside areas. The content in the south of the river is significantly higher than that in the north.
- Spatial distribution of PI (Figure 4b) [51]. The value range of channel segment A content is between 1.08 and 8.00 mg/L, with an average content of 4.82 mg/L. The content in the east–west direction of the river is stable between 3.40 and 4.99 mg/L, and the high content appears in the upstream part of the north–south direction, reaching about 6.00 mg/L, and after entering the downstream, the content is stable at 4.00 mg/L. It is worth noting that the PI of the dam annex before entering the lake further increased. The value range of B content in the channel segment is 1.86~14.00 mg/L, with an average content of 4.17 mg/L. The overall distribution in the river channel is relatively uniform and lower than 8.00 mg/L. In the river channel near the village, in the south and the village in the north, there is a certain high-value area, which is directly related to the diffusion of the river flow. The PI is significantly lower in reach with good mobility. The range of C content in the reach is between 1.200 and 12.00 mg/L, with an average content of 3.03 mg/L. The overall distribution in the river channel is relatively uniform and lower than 6.00 mg/L. There are certain high-value areas at the edge of the river channel and near the confluence of tributaries, which are directly related to the diffusion of river flow. The PI is significantly lower in reach with good liquidity. The range of D content in the reach is between 3.70 and 5.19 mg/L, with an average content of 4.15 mg/L. The content in the west section of the river is significantly higher than that in the east section, and the PI is significantly higher as it is closer to the residential area. The content in the south of the river is generally higher than that in the north.
- Spatial distribution of AN (Figure 4c) [41]. The value range content of channel segment A is between 0.02~0.42 mg/L, with an average content of 0.09 mg/L. The overall content of the river channel is low, and the content of the north–south upstream is slightly higher. In general, the content rate near the bank and at the river bend is higher than that of other river sections. The value range of content in channel segment B is 0.027~0.20 mg/L, with an average content of 0.04 mg/L. The overall content of the river is low, with a slight increase in the narrow tributaries in the north and near the bank in the south. In general, the content near the bank and at the confluence of the river is slightly higher than that of other river sections, which is at a low value. The content range of channel segment C is between 0.001 and 2.28 mg/L, with an average content of 0.12 mg/L. The overall content of the river channel is low. In the west, the content is higher than that in the east, but the overall content is in a lower range. In general, the content near the bank and at the confluence of the river is slightly higher than that of other river sections, which is at a low value. The content range of channel segment D is 0.024~0.17 mg/L, with an average content of 0.079 mg/L. The overall content of the river channel is low. In the west, the content is higher than that in the east, but the overall content is in a lower range. In general, the content near the bank and at the confluence of the river is slightly higher than that of other river sections, which is at a low value as a whole.
- Spatial distribution of TP (Figure 4d) [52]. The content range of channel segment A is between 0.003 and 0.20 mg/L, with an average content of 0.05 mg/L. The overall content of the river is low, and the content of the east–west and south–north rivers upstream is slightly higher. Before entering the lake, with the self-cleaning of the river, the content decreases to below 0.02 mg/L. The content range of channel segment B is 0.0001~0.05 mg/L, with an average content of 0.02 mg/L. The overall content of the river is low, and the high value appears at the confluence of the river and near the north wharf, as well as at the two branches in the east. The total phosphorus content of other rivers is lower than 0.015 mg/L, which is in a very low pollution concentration range. The content range of channel segment C is between 0.01 and 0.17 mg/L, with an average content of 0.05 mg/L. The overall content of the river channel is low, and the high value appears at the confluence of the river channel and near the bank, as well as at the residential area in the east. The total phosphorus content of other rivers is lower than 0.016 mg/L, which is in a very low pollution concentration range. The content range of channel segment D is 0.017~1.10 mg/L, with an average content of 0.052 mg/L. The overall content of the river channel is low, and the high value appears at the confluence of the river channel and near the bank, as well as at the residential area in the east. The total phosphorus content of the east river is lower than 0.064 mg/L, which is within a very low pollution concentration range.
- Spatial distribution of TN (Figure 4e) [53]. The content range of channel segment A is 0.04–0.80 mg/L, with an average content of 0.12 mg/L. The overall content of the river is relatively low, and the content of the east–west and north–south rivers upstream is relatively lower. Before entering the lake, the content shows a slight upward trend, and the content rises to about 0.25 mg/L. The content range of channel segment B is between 0.001 and 0.10 mg/L, with an average content of 0.04 mg/L. The overall content of the river is low, and the distribution is very uniform. The north of the river is close to the powerhouse, and there is a certain high value. It is speculated that the flow velocity is slow at this place, resulting in the enrichment of total nitrogen, and the content increases to more than 0.40 mg/L. The content range of channel segment C is between 0.001 and 8.56 mg/L, with an average content of 3.50 mg/L. The overall content of the river is low, and the distribution is very uniform. The north and south sides of the river are close to the bank, and the east side of the river has entered the residential area, showing a certain high value. It is speculated that the flow velocity is slow at this place, resulting in the enrichment of total nitrogen, and the content of this place increases to more than 0.20 mg/L. The content range of channel segment D is 0.52~2.01 mg/L, with an average content of 0.63 mg/L. The overall content of river channels is low, and the content of river channels in the west is generally higher than that in the east. There are certain high values on the north and south sides of the river, near the bank, and at the residential area on the west side, but the overall content is low, within 1.00 mg/L.
4. Discussion
4.1. The Relationship between Water Flow and Water Quality
- Uniform type. Water pollutants are evenly distributed throughout the river, indicating that there are no obvious sewage outlets along the coast, or the pollutants in the whole river are relatively high, and the self-purification effect is not significant, resulting in the accumulation of pollutants (Figure 5a);
- Enhanced type. It is a common form of water pollutant enrichment, which often occurs in rivers with many pollution discharge points along the coast. With the gradual discharge of pollutants, the self-purification capacity of the river is exceeded, resulting in serious pollution of the river water (Figure 5b);
- Jitter type. There are sporadic pollution sources along the river. New pollutants will flow in but not exceed the self-purification capacity of the river after a period of self-purification of the river. It shows a fluctuating distribution (Figure 5c);
- Weakened type. When the pollutants at the source of the river are high, or there are clean tributaries flowing in along the way, the river will show a gradual decrease in the content of pollutants. Under the influence of the self-purification capacity of the river water, the downstream water quality is significantly improved (Figure 5d).
4.2. Frontiers of Hyperspectral Water Quality Algorithms
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
UAV | Unmanned Aerial Vehicle |
POS | Position and Orientation System |
WGS84 | World Geodetic System 1984 |
GPS | Global Positioning System |
COD | Chemical Oxygen Demand |
PI | Permanganate Index |
AN | Ammonia Nitrogen |
TN | Total Nitrogen |
TP | Total Phosphorus |
R2 | Coefficient of Determination |
SVM | Support Vector Machine |
KNN | K-Nearest Neighbor |
ANN | Artificial Neural Network |
CNN | Convolutional Neural Networks |
RNN | Recurrent Neural Networks |
PLSR | Partial Least Squares Regression |
PCA | Principal Component Analysis |
MLR | Multivariable Linear Regression |
RMSE | Root Mean Square Error |
References
- Wu, F.; Guo, N.; Kumar, P.; Niu, L. Scenario-Based Extreme Flood Risk Analysis of Xiong’an New Area in Northern China. J. Flood Risk Manag. 2021, 14, e12707. [Google Scholar] [CrossRef]
- Li, L.; Zhu, J.; Gao, L.; Cheng, G.; Zhang, B. Detecting and Analyzing the Increase of High-Rising Buildings to Monitor the Dynamic of the Xiong’an New Area. Sustainability 2020, 12, 4355. [Google Scholar] [CrossRef]
- Noesselt, N. A Presidential Signature Initiative: Xiong’an and Governance Modernization under Xi Jinping. J. Contemp. China 2020, 29, 838–852. [Google Scholar]
- Chen, S.; Li, Q.; Wu, W.-Z.; Zhang, Y. Effect of the Xiong’an New Area Policy on the Real Estate Market in Beijing. J. Urban Plan. Dev. 2022, 148, 04022011. [Google Scholar] [CrossRef]
- Wang, S.; Shen, M.; Liu, W.; Ma, Y.; Shi, H.; Zhang, J.; Liu, D. Developing Remote Sensing Methods for Monitoring Water Quality of Alpine Rivers on the Tibetan Plateau. GISci. Remote Sens. 2022, 59, 1384–1405. [Google Scholar] [CrossRef]
- Wang, J.; Shi, T.; Yu, D.; Teng, D.; Ge, X.; Zhang, Z.; Yang, X.; Wang, H.; Wu, G. Ensemble Machine-Learning-Based Framework for Estimating Total Nitrogen Concentration in Water Using Drone-Borne Hyperspectral Imagery of Emergent Plants: A Case Study in an Arid Oasis, NW China. Environ. Pollut. 2020, 266, 115412. [Google Scholar] [CrossRef]
- Cao, Y.; Ye, Y.; Zhao, H.; Jiang, Y.; Wang, H.; Shang, Y.; Wang, J. Remote Sensing of Water Quality Based on HJ-1A HSI Imagery with Modified Discrete Binary Particle Swarm Optimization-Partial Least Squares (MDBPSO-PLS) in Inland Waters: A Case in Weishan Lake. Ecol. Inform. 2018, 44, 21–32. [Google Scholar] [CrossRef]
- Zhang, D.; Guo, Q.; Cao, L.; Zhou, G.; Zhang, G.; Zhan, J. A Multiband Model with Successive Projections Algorithm for Bathymetry Estimation Based on Remotely Sensed Hyperspectral Data in Qinghai Lake. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 2021, 14, 6871–6881. [Google Scholar] [CrossRef]
- Hou, Y.; Zhang, A.; Lv, R.; Zhao, S.; Ma, J.; Zhang, H.; Li, Z. A Study on Water Quality Parameters Estimation for Urban Rivers Based on Ground Hyperspectral Remote Sensing Technology. Environ. Sci. Pollut. Res. 2022, 29, 63640–63654. [Google Scholar] [CrossRef]
- Arabi, B.; Salama, M.S.; van der Wal, D.; Pitarch, J.; Verhoef, W. The Impact of Sea Bottom Effects on the Retrieval of Water Constituent Concentrations from MERIS and OLCI Images in Shallow Tidal Waters Supported by Radiative Transfer Modeling. Remote Sens. Environ. 2020, 237, 111596. [Google Scholar] [CrossRef]
- Wei, L.; Huang, C.; Wang, Z.; Wang, Z.; Zhou, X.; Cao, L. Monitoring of Urban Black-Odor Water Based on Nemerow Index and Gradient Boosting Decision Tree Regression Using UAV-Borne Hyperspectral Imagery. Remote Sens. 2019, 11, 2402. [Google Scholar] [CrossRef]
- Sharp, S.L.; Forrest, A.L.; Bouma-Gregson, K.; Jin, Y.; Cortés, A.; Schladow, S.G. Quantifying Scales of Spatial Variability of Cyanobacteria in a Large, Eutrophic Lake Using Multiplatform Remote Sensing Tools. Front. Environ. Sci. 2021, 9, 612934. [Google Scholar] [CrossRef]
- Xiong, Y.J.; Qiu, G.Y.; Chen, X.H.; Tan, S.L.; Feng, H.X. Hyperspectral Characteristics of Seawater Intrusion in Pearl River Delta, China Based on Laboratory Experiments. In Proceedings of the 2012 IEEE International Geoscience and Remote Sensing Symposium, Munich, Germany, 22–27 July 2012; pp. 4825–4828. [Google Scholar]
- Chang, N.-B.; Vannah, B.; Jeffrey Yang, Y. Comparative Sensor Fusion between Hyperspectral and Multispectral Satellite Sensors for Monitoring Microcystin Distribution in Lake Erie. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 2014, 7, 2426–2442. [Google Scholar] [CrossRef]
- Kutser, T.; Metsamaa, L.; Strömbeck, N.; Vahtmäe, E. Monitoring Cyanobacterial Blooms by Satellite Remote Sensing. Estuar. Coast. Shelf Sci. 2006, 67, 303–312. [Google Scholar] [CrossRef]
- Mbuh, M.J. Optimization of Airborne Real-Time Cueing Hyperspectral Enhanced Reconnaissance (ARCHER) Imagery, in Situ Data with Chemometrics to Evaluate Nutrients in the Shenandoah River, Virginia. Geocart. Int. 2018, 33, 1326–1349. [Google Scholar] [CrossRef]
- Pyo, J.; Hong, S.M.; Jang, J.; Park, S.; Park, J.; Noh, J.H.; Cho, K.H. Drone-Borne Sensing of Major and Accessory Pigments in Algae Using Deep Learning Modeling. GISci. Remote Sens. 2022, 59, 310–332. [Google Scholar] [CrossRef]
- Aasen, H.; Burkart, A.; Bolten, A.; Bareth, G. Generating 3D Hyperspectral Information with Lightweight UAV Snapshot Cameras for Vegetation Monitoring: From Camera Calibration to Quality Assurance. ISPRS J. Photogramm. Remote Sens. 2015, 108, 245–259. [Google Scholar] [CrossRef]
- Buters, T.M.; Bateman, P.W.; Robinson, T.; Belton, D.; Dixon, K.W.; Cross, A.T. Methodological Ambiguity and Inconsistency Constrain Unmanned Aerial Vehicles as a Silver Bullet for Monitoring Ecological Restoration. Remote Sens. 2019, 11, 1180. [Google Scholar] [CrossRef]
- Augusto-Silva, P.B.; Ogashawara, I.; Barbosa, C.C.F.; De Carvalho, L.A.S.; Jorge, D.S.F.; Fornari, C.I.; Stech, J.L. Analysis of MERIS Reflectance Algorithms for Estimating Chlorophyll-a Concentration in a Brazilian Reservoir. Remote Sens. 2014, 6, 11689–11707. [Google Scholar] [CrossRef]
- Dall’Olmo, G.; Gitelson, A.A.; Rundquist, D.C.; Leavitt, B.; Barrow, T.; Holz, J.C. Assessing the Potential of SeaWiFS and MODIS for Estimating Chlorophyll Concentration in Turbid Productive Waters Using Red and Near-Infrared Bands. Remote Sens. Environ. 2005, 96, 176–187. [Google Scholar] [CrossRef]
- Chen, P.; Pan, D.; Mao, Z.; Tao, B. Detection of Water Quality Parameters in Hangzhou Bay Using a Portable Laser Fluorometer. Mar. Pollut. Bull. 2015, 93, 163–171. [Google Scholar] [CrossRef]
- Pyo, J.; Cho, K.H.; Kim, K.; Baek, S.-S.; Nam, G.; Park, S. Cyanobacteria Cell Prediction Using Interpretable Deep Learning Model with Observed, Numerical, and Sensing Data Assemblage. Water Res. 2021, 203, 117483. [Google Scholar] [CrossRef]
- Giardino, C.; Brando, V.E.; Gege, P.; Pinnel, N.; Hochberg, E.; Knaeps, E.; Reusen, I.; Doerffer, R.; Bresciani, M.; Braga, F.; et al. Imaging Spectrometry of Inland and Coastal Waters: State of the Art, Achievements and Perspectives. Surv. Geophys. 2019, 40, 401–429. [Google Scholar] [CrossRef]
- Keith, D.J.; Schaeffer, B.A.; Lunetta, R.S.; Gould, R.W.; Rocha, K.; Cobb, D.J. Remote Sensing of Selected Water-Quality Indicators with the Hyperspectral Imager for the Coastal Ocean (HICO) Sensor. Int. J. Remote Sens. 2014, 35, 2927–2962. [Google Scholar] [CrossRef]
- Niu, C.; Tan, K.; Jia, X.; Wang, X. Deep Learning Based Regression for Optically Inactive Inland Water Quality Parameter Estimation Using Airborne Hyperspectral Imagery. Environ. Pollut. 2021, 286, 117534. [Google Scholar] [CrossRef]
- Harringmeyer, J.P.; Kaiser, K.; Thompson, D.R.; Gierach, M.M.; Cash, C.L.; Fichot, C.G. Detection and Sourcing of CDOM in Urban Coastal Waters with UV-Visible Imaging Spectroscopy. Front. Environ. Sci. 2021, 9, 647966. [Google Scholar] [CrossRef]
- Zhang, D.; Zhang, L.; Sun, X.; Gao, Y.; Lan, Z.; Wang, Y.; Zhai, H.; Li, J.; Wang, W.; Chen, M.; et al. A New Method for Calculating Water Quality Parameters by Integrating Space-Ground Hyperspectral Data and Spectral-In Situ Assay Data. Remote Sens. 2022, 14, 3652. [Google Scholar] [CrossRef]
- Marcello, J.; Eugenio, F.; Martín, J.; Marqués, F. Seabed Mapping in Coastal Shallow Waters Using High Resolution Multispectral and Hyperspectral Imagery. Remote Sens. 2018, 10, 1208. [Google Scholar] [CrossRef]
- Olmanson, L.G.; Brezonik, P.L.; Bauer, M.E. Airborne Hyperspectral Remote Sensing to Assess Spatial Distribution of Water Quality Characteristics in Large Rivers: The Mississippi River and Its Tributaries in Minnesota. Remote Sens. Environ. 2013, 130, 254–265. [Google Scholar] [CrossRef]
- Lu, L.; Gong, Z.; Liang, Y.; Liang, S. Retrieval of Chlorophyll-a Concentrations of Class II Water Bodies of Inland Lakes and Reservoirs Based on ZY1-02D Satellite Hyperspectral Data. Remote Sens. 2022, 14, 1842. [Google Scholar] [CrossRef]
- Wang, C.; Shi, K.; Ming, X.; Cong, M.; Liu, X.; Guo, W. A Comparative Study of the COD Hyperspectral Inversion Models in Water Based on the Maching Learning. Spectrosc. Spectr. Anal. 2022, 42, 2353–2358. [Google Scholar] [CrossRef]
- Sabat-Tomala, A.; Jarocinska, A.M.; Zagajewski, B.; Magnuszewski, A.S.; Slawik, L.M.; Ochtyra, A.; Raczko, E.; Lechnio, J.R. Application of HySpex Hyperspectral Images for Verification of a Two-Dimensional Hydrodynamic Model. Eur. J. Remote Sens. 2018, 51, 637–649. [Google Scholar] [CrossRef]
- Parsons, M.; Bratanov, D.; Gaston, K.J.; Gonzalez, F. UAVs, Hyperspectral Remote Sensing, and Machine Learning Revolutionizing Reef Monitoring. Sensors 2018, 18, 2026. [Google Scholar] [CrossRef] [PubMed]
- Liu, H.; Yu, T.; Hu, B.; Hou, X.; Zhang, Z.; Liu, X.; Liu, J.; Wang, X.; Zhong, J.; Tan, Z.; et al. UAV-Borne Hyperspectral Imaging Remote Sensing System Based on Acousto-Optic Tunable Filter for Water Quality Monitoring. Remote Sens. 2021, 13, 4069. [Google Scholar] [CrossRef]
- Lin, J.; Zhang, C.; You, H. Retrieval of Water Quality Parameters of Urban River Network Using Hyperspectral Date Based on Inherent Optical Parameters. Spectrosc. Spectr. Anal. 2019, 39, 3761–3768. [Google Scholar]
- Feng, L.; Hou, X.; Zheng, Y. Monitoring and Understanding the Water Transparency Changes of Fifty Large Lakes on the Yangtze Plain Based on Long-Term MODIS Observations. Remote Sens. Environ. 2019, 221, 675–686. [Google Scholar] [CrossRef]
- Kim, S.; Kwon, Y.S.; Pyo, J.; Ligaray, M.; Min, J.-H.; Ahn, J.M.; Baek, S.-S.; Cho, K.H. Developing a Cloud-Based Toolbox for Sensitivity Analysis of a Water Quality Model. Environ. Modell. Softw. 2021, 141, 105068. [Google Scholar] [CrossRef]
- Kloiber, S.M.; Brezonik, P.L.; Bauer, M.E. Application of Landsat Imagery to Regional-Scale Assessments of Lake Clarity. Water Res. 2002, 36, 4330–4340. [Google Scholar] [CrossRef]
- Han, L.; Chen, S.; Chen, X.; Li, D.; Li, Y.; Sun, L.; Lu, C.; Chen, W. Estimation of Water Clarity in Offshore Marine Areas Based on Modified Semi-Analysis Spectra Model. Spectrosc. Spectr. Anal. 2014, 34, 477–482. [Google Scholar] [CrossRef]
- Wang, X.; Gong, C.; Ji, T.; Hu, Y.; Li, L. Inland Water Quality Parameters Retrieval Based on the VIP-SPCA by Hyperspectral Remote Sensing. J. Appl. Remote Sens. 2021, 15, 042609. [Google Scholar] [CrossRef]
- Tripathy, M.; Ramakrishnan, R.; Shah, D.; Shah, P.; Bhattacharya, B.; Shetty, A. Assessment of Coastal Water Quality Parameters along Mangaluru Region from AVIRIS-NG Hyperspectral Remote Sensing Data. J. Indian Soc. Remote Sens. 2022, 50, 1477–1486. [Google Scholar] [CrossRef]
- Lee, Z.; Hu, C.; Shang, S.; Du, K.; Lewis, M.; Arnone, R.; Brewin, R. Penetration of UV-Visible Solar Radiation in the Global Oceans: Insights from Ocean Color Remote Sensing. J. Geophys. Res. Ocean. 2013, 118, 4241–4255. [Google Scholar] [CrossRef]
- Zhu, X.; Wang, G.; Wang, X.; Qi, S.; Ma, F.; Zhang, W.; Zhang, H. Hydrogeochemical and Isotopic Analyses of Deep Geothermal Fluids in the Wumishan Formation in Xiong’an New Area, China. Lithosphere 2022, 2021, 2576752. [Google Scholar] [CrossRef]
- Song, K.; Li, L.; Tedesco, L.P.; Li, S.; Clercin, N.A.; Hall, B.E.; Li, Z.; Shi, K. Hyperspectral Determination of Eutrophication for a Water Supply Source via Genetic Algorithm-Partial Least Squares (GA-PLS) Modeling. Sci. Total Environ. 2012, 426, 220–232. [Google Scholar] [CrossRef] [PubMed]
- Cai, J.; Chen, J.; Dou, X.; Xing, Q. Using Machine Learning Algorithms with In Situ Hyperspectral Reflectance Data to Assess Comprehensive Water Quality of Urban Rivers. IEEE Trans. Geosci. Remote Sens. 2022, 60, 5523113. [Google Scholar] [CrossRef]
- Santini, F.; Alberotanza, L.; Cavalli, R.M.; Pignatti, S. A Two-Step Optimization Procedure for Assessing Water Constituent Concentrations by Hyperspectral Remote Sensing Techniques: An Application to the Highly Turbid Venice Lagoon Waters. Remote Sens. Environ. 2010, 114, 887–898. [Google Scholar] [CrossRef]
- Gu, K.; Zhang, Y.; Qiao, J. Random Forest Ensemble for River Turbidity Measurement from Space Remote Sensing Data. IEEE Trans. Instrum. Meas. 2020, 69, 9028–9036. [Google Scholar] [CrossRef]
- Mishra, S.; Mishra, D.R.; Lee, Z. Bio-Optical Inversion in Highly Turbid and Cyanobacteria-Dominated Waters. IEEE Trans. Geosci. Remote Sens. 2014, 52, 375–388. [Google Scholar] [CrossRef]
- Zhang, Y.; Wu, L.; Ren, H.; Liu, Y.; Zheng, Y.; Liu, Y.; Dong, J. Mapping Water Quality Parameters in Urban Rivers from Hyperspectral Images Using a New Self-Adapting Selection of Multiple Artificial Neural Networks. Remote Sens. 2020, 12, 336. [Google Scholar] [CrossRef]
- Yang, Z.; Gong, C.; Ji, T.; Hu, Y.; Li, L. Water Quality Retrieval from ZY1-02D Hyperspectral Imagery in Urban Water Bodies and Comparison with Sentinel-2. Remote Sens. 2022, 14, 5029. [Google Scholar] [CrossRef]
- Cao, Q.; Yu, G.; Sun, S.; Dou, Y.; Li, H.; Qiao, Z. Monitoring Water Quality of the Haihe River Based on Ground-Based Hyperspectral Remote Sensing. Water 2022, 14, 22. [Google Scholar] [CrossRef]
- Liu, J.; Ding, J.; Ge, X.; Wang, J. Evaluation of Total Nitrogen in Water via Airborne Hyperspectral Data: Potential of Fractional Order Discretization Algorithm and Discrete Wavelet Transform Analysis. Remote Sens. 2021, 13, 4643. [Google Scholar] [CrossRef]
- Zhang, Y.; Wu, L.; Deng, L.; Ouyang, B. Retrieval of Water Quality Parameters from Hyperspectral Images Using a Hybrid Feedback Deep Factorization Machine Model. Water Res. 2021, 204, 117618. [Google Scholar] [CrossRef] [PubMed]
- Talens, P.; Mora, L.; Morsy, N.; Barbin, D.F.; ElMasry, G.; Sun, D.-W. Prediction of Water and Protein Contents and Quality Classification of Spanish Cooked Ham Using NIR Hyperspectral Imaging. J. Food Eng. 2013, 117, 272–280. [Google Scholar] [CrossRef]
- Lee, Z.P.; Carder, K.L.; Arnone, R.A. Deriving Inherent Optical Properties from Water Color: A Multiband Quasi-Analytical Algorithm for Optically Deep Waters. Appl. Opt. 2002, 41, 5755–5772. [Google Scholar] [CrossRef] [PubMed]
- Raqueno, R.; Raqueno, N.; Fairbanks, R.; Schott, J.; Vodacek, A.; Hamel, J. Hyperspectral Analysis Tools for the Multiparameter Inversion of Water Quality Factors in Coastal Regions. In Imaging Spectrometry VI; Descour, M.R., Shen, S.S., Eds.; SPIE: Bellingham, WA, USA, 2000; Volume 4132, pp. 323–333. [Google Scholar]
- Zhang, D.; Zeng, S.; He, W. Selection and Quantification of Best Water Quality Indicators Using UAV-Mounted Hyperspectral Data: A Case Focusing on a Local River Network in Suzhou City, China. Sustainability 2022, 14, 16226. [Google Scholar] [CrossRef]
- Thiemann, S.; Kaufmann, H. Lake Water Quality Monitoring Using Hyperspectral Airborne Data—A Semlempirical Multisensor and Multitemporal Approach for the Mecklenburg Lake District, Germany. Remote Sens. Environ. 2002, 81, 228–237. [Google Scholar] [CrossRef]
- Yan, F.-L.; Wang, S.-X.; Zhou, Y.; Xiao, Q.; Zhu, L.-Y.; Wang, L.-T.; Jiao, Y.-Q. Monitoring the water quality of Taihu Lake by using hyperion hyperspectral data. J. Infrared Millim. Waves 2006, 25, 460–464. [Google Scholar]
- Ben-Dor, E.; Patkin, K.; Banin, A.; Karnieli, A. Mapping of Several Soil Properties Using DAIS-7915 Hyperspectral Scanner Data—A Case Study over Clayey Soils in Israel. Int. J. Remote Sens. 2002, 23, 1043–1062. [Google Scholar] [CrossRef]
- Haji Gholizadeh, M.; Melesse, A.M.; Reddi, L. Spaceborne and Airborne Sensors in Water Quality Assessment. Int. J. Remote Sens. 2016, 37, 3143–3180. [Google Scholar] [CrossRef]
- Gorkavyi, N.; Fasnacht, Z.; Haffner, D.; Marchenko, S.; Joiner, J.; Vasilkov, A. Detection of Anomalies in the UV–Vis Reflectances from the Ozone Monitoring Instrument. Atmos. Meas. Tech. 2021, 14, 961–974. [Google Scholar] [CrossRef]
- Guillaume, M.; Minghelli, A.; Deville, Y.; Chami, M.; Juste, L.; Lenot, X.; Lafrance, B.; Jay, S.; Briottet, X.; Serfaty, V. Mapping Benthic Habitats by Extending Non-Negative Matrix Factorization to Address the Water Column and Seabed Adjacency Effects. Remote Sens. 2020, 12, 2072. [Google Scholar] [CrossRef]
- Eugenio, F.; Alfaro, M.; Martin, J.; Marcello, J. Multiplatform Earth Observation Systems for the Monitoring and Conservation of Vulnerable Natural Ecosystems. In Proceedings of the IGARSS 2019—2019 IEEE International Geoscience and Remote Sensing Symposium, Yokohama, Japan, 28 July–2 August 2019; pp. 8230–8233. [Google Scholar]
- Harmel, T.; Gilerson, A.; Tonizzo, A.; Chowdhary, J.; Weidemann, A.; Arnone, R.; Ahmed, S. Polarization Impacts on the Water-Leaving Radiance Retrieval from above-Water Radiometric Measurements. Appl. Opt. 2012, 51, 8324–8340. [Google Scholar] [CrossRef]
- Qin, P.; Cai, Y.; Wang, X. Small Waterbody Extraction with Improved U-Net Using Zhuhai-1 Hyperspectral Remote Sensing Images. IEEE Geosci. Remote Sens. Lett. 2022, 19, 3047918. [Google Scholar] [CrossRef]
- Ahn, J.M.; Kim, B.; Jong, J.; Nam, G.; Park, L.J.; Park, S.; Kang, T.; Lee, J.-K.; Kim, J. Predicting Cyanobacterial Blooms Using Hyperspectral Images in a Regulated River. Sensors 2021, 21, 530. [Google Scholar] [CrossRef] [PubMed]
- Lu, Q.; Si, W.; Wei, L.; Li, Z.; Xia, Z.; Ye, S.; Xia, Y. Retrieval of Water Quality from UAV-Borne Hyperspectral Imagery: A Comparative Study of Machine Learning Algorithms. Remote Sens. 2021, 13, 3928. [Google Scholar] [CrossRef]
- Sarigai; Yang, J.; Zhou, A.; Han, L.; Li, Y.; Xie, Y. Monitoring Urban Black-Odorous Water by Using Hyperspectral Data and Machine Learning. Environ. Pollut. 2021, 269, 116166. [Google Scholar] [CrossRef]
- Hunter, P.D.; Tyler, A.N.; Carvalho, L.; Codd, G.A.; Maberly, S.C. Hyperspectral Remote Sensing of Cyanobacterial Pigments as Indicators for Cell Populations and Toxins in Eutrophic Lakes. Remote Sens. Environ. 2010, 114, 2705–2718. [Google Scholar] [CrossRef]
- Arroyo-Mora, J.P.; Kalacska, M.; Inamdar, D.; Soffer, R.; Lucanus, O.; Gorman, J.; Naprstek, T.; Schaaf, E.S.; Ifimov, G.; Elmer, K.; et al. Implementation of a UAV–Hyperspectral Pushbroom Imager for Ecological Monitoring. Drones 2019, 3, 12. [Google Scholar] [CrossRef]
- Zhang, D.; Zhu, Z.; Zhang, L.; Sun, X.; Zhang, Z.; Zhang, W.; Li, X.; Zhu, Q. Response of Industrial Warm Drainage to Tide Revealed by Airborne and Sea Surface Observations. Remote Sens. 2023, 15, 205. [Google Scholar] [CrossRef]
Channel Segment | COD (mg/L) | PI (mg/L) | AN (mg/L) | TP (mg/L) | TN (mg/L) | |||||
---|---|---|---|---|---|---|---|---|---|---|
Range | Mean | Range | Mean | Range | Mean | Range | Mean | Range | Mean | |
A | 11.20–23.00 | 17.54 | 4.20–6.00 | 4.85 | 0.03–0.19 | 0.07 | 0.07–0.13 | 0.10 | 0.04–0.12 | 0.11 |
B | 2.99–11.89 | 5.40 | 1.60–10.21 | 3.76 | 0.03–0.12 | 0.05 | 0.02–0.05 | 0.03 | 0.10–0.67 | 0.44 |
C | 13.79–20.03 | 14.34 | 1.21–11.52 | 4.03 | 0.05–2.36 | 0.12 | 0.01–0.17 | 0.05 | 0.54–8.56 | 3.51 |
D | 3.94–6.22 | 4.95 | 2.65–11.01 | 4.92 | 0.12–0.32 | 0.04 | 0.02–0.19 | 0.06 | 0.61–4.47 | 1.24 |
Serial Number | Transformation Method | Process Formulas |
---|---|---|
1 | Original spectrum | |
2 | Exponential | |
3 | Multiple scattering correction | |
4 | Envelope elimination | |
5 | Logarithm | |
6 | Homogenization | |
7 | First-order differential | |
8 | Second-order differential | |
9 | Exponential after first-order differential | |
10 | Exponential after second-order differential | |
11 | Logarithm after first-order differential | |
12 | Logarithm after second-order differential | |
13 | Homogenization after first-order differential | |
14 | Homogenization after second-order differential | |
15 | Envelope elimination after first-order differential | |
16 | Envelope elimination after second-order differential | |
17 | Multiple scattering correction after first-order differential | |
18 | Multiple scattering correction after second-order differential |
Segment | Indicators | Transformation Method | Calculation Model | R2 | RMSE |
---|---|---|---|---|---|
A | COD | Logarithm | 0.82 | 5.39 | |
PI | First-order differential | 0.87 | 5.63 | ||
AN | Envelope elimination | 0.83 | 0.69 | ||
TP | Exponential | 0.85 | 0.20 | ||
TN | First-order differential | 0.82 | 0.60 | ||
B | COD | Envelope elimination | 0.89 | 3.74 | |
PI | Logarithm after first-order differential | 0.92 | 3.76 | ||
AN | Homogenization after second-order differential | 0.72 | 3.78 | ||
TP | Envelope elimination | 0.90 | 0.42 | ||
TN | Exponential after first-order differential | 0.91 | 1.24 | ||
C | COD | Original spectrum | 0.85 | 1.09 | |
PI | Multiple-scattering correction after first-order differential | 0.79 | 2.74 | ||
AN | Multiple-scattering correction after first-order differential | 0.87 | 0.79 | ||
TP | Multiple-scattering correction | 0.86 | 0.73 | ||
TN | First-order differential | 0.89 | 1.49 | ||
D | COD | Multiple-scattering correction after second-order differential | 0.78 | 0.22 | |
PI | Logarithm after second-order differential | 0.93 | 3.84 | ||
AN | Multiple-scattering correction after first-order differential | 0.76 | 0.31 | ||
TP | Homogenization | 0.90 | 3.01 | ||
TN | Homogenization | 0.84 | 1.32 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Yang, Y.; Zhang, D.; Li, X.; Wang, D.; Yang, C.; Wang, J. Winter Water Quality Modeling in Xiong’an New Area Supported by Hyperspectral Observation. Sensors 2023, 23, 4089. https://doi.org/10.3390/s23084089
Yang Y, Zhang D, Li X, Wang D, Yang C, Wang J. Winter Water Quality Modeling in Xiong’an New Area Supported by Hyperspectral Observation. Sensors. 2023; 23(8):4089. https://doi.org/10.3390/s23084089
Chicago/Turabian StyleYang, Yuechao, Donghui Zhang, Xusheng Li, Daming Wang, Chunhua Yang, and Jianhua Wang. 2023. "Winter Water Quality Modeling in Xiong’an New Area Supported by Hyperspectral Observation" Sensors 23, no. 8: 4089. https://doi.org/10.3390/s23084089
APA StyleYang, Y., Zhang, D., Li, X., Wang, D., Yang, C., & Wang, J. (2023). Winter Water Quality Modeling in Xiong’an New Area Supported by Hyperspectral Observation. Sensors, 23(8), 4089. https://doi.org/10.3390/s23084089