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Water leakage forecasting: the application of a modified fuzzy evolving algorithm

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Water leakage forecasting: the application of a modified fuzzy evolving algorithm. / Birek, Lech; Petrovic, Dobrila; Boylan, John.
In: Applied Soft Computing, Vol. 14, No. Part B, 01.01.2014, p. 305-315.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Birek, L, Petrovic, D & Boylan, J 2014, 'Water leakage forecasting: the application of a modified fuzzy evolving algorithm', Applied Soft Computing, vol. 14, no. Part B, pp. 305-315. https://doi.org/10.1016/j.asoc.2013.05.021

APA

Vancouver

Birek L, Petrovic D, Boylan J. Water leakage forecasting: the application of a modified fuzzy evolving algorithm. Applied Soft Computing. 2014 Jan 1;14(Part B):305-315. doi: 10.1016/j.asoc.2013.05.021

Author

Birek, Lech ; Petrovic, Dobrila ; Boylan, John. / Water leakage forecasting : the application of a modified fuzzy evolving algorithm. In: Applied Soft Computing. 2014 ; Vol. 14, No. Part B. pp. 305-315.

Bibtex

@article{d5d0eba358374367b344561b5dfec0b3,
title = "Water leakage forecasting: the application of a modified fuzzy evolving algorithm",
abstract = "This paper investigates the use of evolving fuzzy algorithms in forecasting. An evolving Takagi-Sugeno (eTS) algorithm, which is based on a recursive version of the subtractive algorithm is considered. It groups data into several clusters based on Euclidean distance between the relevant independent variables. The Mod eTS algorithm, which incorporates a modified dynamic update of cluster radii while accommodating new available data is proposed. The created clusters serve as a base for fuzzy If-Then rules with Gaussian membership functions which are defined using the cluster centres and have linear functions in the consequent i.e., Then parts of rules. The parameters of the linear functions are calculated using a weighted version of the Recursive Least Squares algorithm. The proposed algorithm is applied to a leakage forecasting problem faced by one of the leading UK water supplying companies. Using the real world data provided by the company the forecasting results obtained from the proposed modified eTS algorithm, Mod eTS, are compared to the standard eTS algorithm, exTS, eTS+ and fuzzy C-means clustering algorithm and some standard statistical forecasting methods. Different measures of forecasting accuracy are used. The results show higher accuracy achieved by applying the algorithm proposed compared to other fuzzy clustering algorithms and statistical methods. Similar results are obtained when comparing with other fuzzy evolving algorithms with dynamic cluster radii. Furthermore the algorithm generates typically a smaller number of clusters than standard fuzzy forecasting methods which leads to more transparent forecasting models.",
keywords = "Fuzzy If-Then rules, Evolving fuzzy system, Forecasting, Evolving clustering, Leakage",
author = "Lech Birek and Dobrila Petrovic and John Boylan",
year = "2014",
month = jan,
day = "1",
doi = "10.1016/j.asoc.2013.05.021",
language = "English",
volume = "14",
pages = "305--315",
journal = "Applied Soft Computing",
issn = "1568-4946",
publisher = "Elsevier Science B.V.",
number = "Part B",

}

RIS

TY - JOUR

T1 - Water leakage forecasting

T2 - the application of a modified fuzzy evolving algorithm

AU - Birek, Lech

AU - Petrovic, Dobrila

AU - Boylan, John

PY - 2014/1/1

Y1 - 2014/1/1

N2 - This paper investigates the use of evolving fuzzy algorithms in forecasting. An evolving Takagi-Sugeno (eTS) algorithm, which is based on a recursive version of the subtractive algorithm is considered. It groups data into several clusters based on Euclidean distance between the relevant independent variables. The Mod eTS algorithm, which incorporates a modified dynamic update of cluster radii while accommodating new available data is proposed. The created clusters serve as a base for fuzzy If-Then rules with Gaussian membership functions which are defined using the cluster centres and have linear functions in the consequent i.e., Then parts of rules. The parameters of the linear functions are calculated using a weighted version of the Recursive Least Squares algorithm. The proposed algorithm is applied to a leakage forecasting problem faced by one of the leading UK water supplying companies. Using the real world data provided by the company the forecasting results obtained from the proposed modified eTS algorithm, Mod eTS, are compared to the standard eTS algorithm, exTS, eTS+ and fuzzy C-means clustering algorithm and some standard statistical forecasting methods. Different measures of forecasting accuracy are used. The results show higher accuracy achieved by applying the algorithm proposed compared to other fuzzy clustering algorithms and statistical methods. Similar results are obtained when comparing with other fuzzy evolving algorithms with dynamic cluster radii. Furthermore the algorithm generates typically a smaller number of clusters than standard fuzzy forecasting methods which leads to more transparent forecasting models.

AB - This paper investigates the use of evolving fuzzy algorithms in forecasting. An evolving Takagi-Sugeno (eTS) algorithm, which is based on a recursive version of the subtractive algorithm is considered. It groups data into several clusters based on Euclidean distance between the relevant independent variables. The Mod eTS algorithm, which incorporates a modified dynamic update of cluster radii while accommodating new available data is proposed. The created clusters serve as a base for fuzzy If-Then rules with Gaussian membership functions which are defined using the cluster centres and have linear functions in the consequent i.e., Then parts of rules. The parameters of the linear functions are calculated using a weighted version of the Recursive Least Squares algorithm. The proposed algorithm is applied to a leakage forecasting problem faced by one of the leading UK water supplying companies. Using the real world data provided by the company the forecasting results obtained from the proposed modified eTS algorithm, Mod eTS, are compared to the standard eTS algorithm, exTS, eTS+ and fuzzy C-means clustering algorithm and some standard statistical forecasting methods. Different measures of forecasting accuracy are used. The results show higher accuracy achieved by applying the algorithm proposed compared to other fuzzy clustering algorithms and statistical methods. Similar results are obtained when comparing with other fuzzy evolving algorithms with dynamic cluster radii. Furthermore the algorithm generates typically a smaller number of clusters than standard fuzzy forecasting methods which leads to more transparent forecasting models.

KW - Fuzzy If-Then rules

KW - Evolving fuzzy system

KW - Forecasting

KW - Evolving clustering

KW - Leakage

U2 - 10.1016/j.asoc.2013.05.021

DO - 10.1016/j.asoc.2013.05.021

M3 - Journal article

VL - 14

SP - 305

EP - 315

JO - Applied Soft Computing

JF - Applied Soft Computing

SN - 1568-4946

IS - Part B

ER -