Short-term prediction of stream turbidity using surrogate data and a meta-model approach: A case study

被引:1
|
作者
Rele, Bhargav [1 ]
Hogan, Caleb [2 ]
Kandanaarachchi, Sevvandi [2 ,3 ]
Leigh, Catherine [1 ]
机构
[1] RMIT Univ, Sch Sci, Biosci & Food Technol Discipline, Bundoora, Vic 3083, Australia
[2] RMIT Univ, Sch Sci & Math Sci, Melbourne, Vic 3000, Australia
[3] CSIROs Data61, Res Way, Clayton, Vic 3168, Australia
基金
澳大利亚研究理事会;
关键词
ARIMA; GAM; LSTM; meta-model; river; time series forecasting; turbidity; water quality; RIVER;
D O I
10.1002/hyp.14857
中图分类号
TV21 [水资源调查与水利规划];
学科分类号
081501 ;
摘要
Many water-quality monitoring programs aim to measure turbidity to help guide effective management of waterways and catchments, yet distributing turbidity sensors throughout networks is typically cost prohibitive. To this end, we built and compared the ability of dynamic regression (auto-regressive integrated moving average [ARIMA]), long short-term memory neural nets (LSTM), and generalized additive models (GAM) to forecast stream turbidity one step ahead, using surrogate data from relatively low-cost in-situ sensors and publicly available databases. We iteratively trialled combinations of four surrogate covariates (rainfall, water level, air temperature and total global solar exposure) selecting a final model for each type that minimized the corrected Akaike information criterion. Cross-validation using a rolling time-window indicated that ARIMA, which included the rainfall and water-level covariates only, produced the most accurate predictions, followed closely by GAM, which included all four covariates. However, according to the no-free-lunch theorems in machine learning, no single model has an advantage over all other models for all instances. Therefore, we constructed a meta-model, trained on time-series features of turbidity, to take advantage of the strengths of each model over different time points and predict the best model (that with the lowest forecast error one-step prior) for each time step. The meta-model outperformed all other models, indicating that this methodology can yield high accuracy and may be a viable alternative to using measurements sourced directly from turbidity-sensors where costs prohibit their deployment and maintenance, and when predicting turbidity across the short term. Our findings also indicated that temperature and light-associated variables, for example underwater illuminance, may hold promise as cost-effective, high-frequency surrogates of turbidity, especially when combined with other covariates, like rainfall, that are typically measured at coarse levels of spatial resolution.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] A dynamic model for short-term prediction of stream attributes
    Misra S.
    Saha S.K.
    Mazumdar C.
    Innovations in Systems and Software Engineering, 2017, 13 (4) : 261 - 269
  • [2] PREDICTION OF FUTURE SHORT-TERM STREAM CHEMISTRY - A MODELING APPROACH
    NEAL, C
    ROBSON, A
    REYNOLDS, B
    JENKINS, A
    JOURNAL OF HYDROLOGY, 1992, 130 (1-4) : 87 - 103
  • [3] A STUDY ON SHORT-TERM PREDICTION OF ECONOMY DATA USING CHAOS ANALYSIS
    Fujihara, Yutaka
    Ikeda, Sinichi
    Nakamura, Kenji
    Dai, Fengzhi
    ICIM 2008: PROCEEDINGS OF THE NINTH INTERNATIONAL CONFERENCE ON INDUSTRIAL MANAGEMENT, 2008, : 381 - 385
  • [4] A Nonparametric Model for Short-Term Travel Time Prediction Using Bluetooth Data
    Qiao, Wenxin
    Haghani, Ali
    Hamedi, Masoud
    JOURNAL OF INTELLIGENT TRANSPORTATION SYSTEMS, 2013, 17 (02) : 165 - 175
  • [5] A Short-Term Data Based Water Consumption Prediction Approach
    Benitez, Rafael
    Ortiz-Caraballo, Carmen
    Carlos Preciado, Juan
    Conejero, Jose M.
    Sanchez Figueroa, Fernando
    Rubio-Largo, Alvaro
    ENERGIES, 2019, 12 (12)
  • [6] A New Approach in Short-Term Prediction of the Electrical Charge with Regression Models A Case Study
    Gharehchopogh, Farhad Soleimanian
    Mokri, Freshte Dabaghchi
    Molany, Maryam
    INTERNATIONAL JOURNAL OF APPLIED METAHEURISTIC COMPUTING, 2013, 4 (03) : 34 - 46
  • [7] The surrogate model for short-term extreme response prediction based on ANN and Kriging algorithm
    Zhao, Guanhua
    Zhao, Yuliang
    Dong, Sheng
    APPLIED OCEAN RESEARCH, 2024, 152
  • [8] Traffic Stream Short-term State Prediction using Machine Learning Techniques
    Elhenawy, Mohammed
    Rakha, Hesham
    Chen, Hao
    VEHITS: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON VEHICLE TECHNOLOGY AND INTELLIGENT TRANSPORT SYSTEMS, 2016, : 124 - 129
  • [9] Short-Term Prediction of Wind Farm Power: A Data Mining Approach
    Kusiak, Andrew
    Zheng, Haiyang
    Song, Zhe
    IEEE TRANSACTIONS ON ENERGY CONVERSION, 2009, 24 (01) : 125 - 136
  • [10] A Short-Term Quantitative Precipitation Forecasting Approach Using Radar Data and a RAP Model
    Wang, Yadong
    Tang, Lin
    GEOMATICS, 2021, 1 (02): : 310 - 323