Leaf wetness duration (LWD) is a key parameter in agricultural meteorology since it is related to epidemiology of many important crops, controlling pathogen occurrence and development rates. Because LWD is not widely measured, several methods have been developed to estimate it from weather data. Among the models used to estimate LWD, those that use physical principles of dew formation and dew and/or rain evaporation have shown good portability and sufficiently accurate results, but their complexity is a disadvantage for operational use. Alternatively, empirical models have been used despite their limitations. The simplest empirical models use only relative humidity data. The objective of this study was to evaluate the performance of three RH-based empirical models to estimate LWD in four regions around the world that have different climate conditions. Hourly LWD, air temperature, and relative humidity data were obtained from Ames, Iowa (USA), Elora, Ontario (Canada), Florence, Toscany (Italy), and Piracicaba, São Paulo State (Brazil). These data were used to evaluate the performance of the following empirical LWD estimation models: constant RH threshold (RH90%); dew point depression (DPD); and extended RH threshold (EXT_RH). Different performance of the models was observed in the four locations. In Ames, Elora and Piracicaba, the RH≥90% and DPD models underestimated LWD, whereas in Florence these methods overestimated LWD, especially for shorter wet periods. When the EXT_RH model was used, LWD was overestimated for all locations, with a significant increase in the errors. In general, the RH≥90% model performed best, presenting the highest general fraction of correct estimates (FC), between 0.87 and 0.92, and the lowest false alarm ratio (FAR), between 0.02 and 0.31). The use of specific thresholds for each location improved accuracy of the RH model substantially; MAE ranging from 1.23 to 1.89 h, which is very similar to errors obtained with published physical models for LWD estimation. Based on these results, we concluded that, if calibrated locally, LWD can be estimated with acceptable accuracy by RH above a specific threshold, and that the EXT_RH method was unsuitable for estimating LWD at the locations used in this study.

Suitability of relative humidity as an estimator of leaf wetness duration / P.C.Sentelhas; A.Dalla Marta; S.Orlandini; E.A.Santos; T.J.Gillespie; M.L.Gleason. - In: AGRICULTURAL AND FOREST METEOROLOGY. - ISSN 0168-1923. - STAMPA. - 148:(2008), pp. 392-400. [10.1016/j.agrformet.2007.09.011]

Suitability of relative humidity as an estimator of leaf wetness duration

DALLA MARTA, ANNA;ORLANDINI, SIMONE;
2008

Abstract

Leaf wetness duration (LWD) is a key parameter in agricultural meteorology since it is related to epidemiology of many important crops, controlling pathogen occurrence and development rates. Because LWD is not widely measured, several methods have been developed to estimate it from weather data. Among the models used to estimate LWD, those that use physical principles of dew formation and dew and/or rain evaporation have shown good portability and sufficiently accurate results, but their complexity is a disadvantage for operational use. Alternatively, empirical models have been used despite their limitations. The simplest empirical models use only relative humidity data. The objective of this study was to evaluate the performance of three RH-based empirical models to estimate LWD in four regions around the world that have different climate conditions. Hourly LWD, air temperature, and relative humidity data were obtained from Ames, Iowa (USA), Elora, Ontario (Canada), Florence, Toscany (Italy), and Piracicaba, São Paulo State (Brazil). These data were used to evaluate the performance of the following empirical LWD estimation models: constant RH threshold (RH90%); dew point depression (DPD); and extended RH threshold (EXT_RH). Different performance of the models was observed in the four locations. In Ames, Elora and Piracicaba, the RH≥90% and DPD models underestimated LWD, whereas in Florence these methods overestimated LWD, especially for shorter wet periods. When the EXT_RH model was used, LWD was overestimated for all locations, with a significant increase in the errors. In general, the RH≥90% model performed best, presenting the highest general fraction of correct estimates (FC), between 0.87 and 0.92, and the lowest false alarm ratio (FAR), between 0.02 and 0.31). The use of specific thresholds for each location improved accuracy of the RH model substantially; MAE ranging from 1.23 to 1.89 h, which is very similar to errors obtained with published physical models for LWD estimation. Based on these results, we concluded that, if calibrated locally, LWD can be estimated with acceptable accuracy by RH above a specific threshold, and that the EXT_RH method was unsuitable for estimating LWD at the locations used in this study.
2008
148
392
400
P.C.Sentelhas; A.Dalla Marta; S.Orlandini; E.A.Santos; T.J.Gillespie; M.L.Gleason
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/345929
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