Page - 136 - in Intelligent Environments 2019 - Workshop Proceedings of the 15th International Conference on Intelligent Environments
Image of the Page - 136 -
Text of the Page - 136 -
Figure3. ComparisonbetweenthepredictionoftheLSTMandtheactual temperatureofthefirst200instances
of test3 (fold3)of the3-foldcrossvalidationexperiments.
Figure4. Comparisonbetween theLSTMpredictionand theactual temperatureof the144 temperaturemea-
surementsobtainedon17February2019, this corresponds toa full 24-hourday.
5. ConclusionsandFutureWork
Thepredictionof lowtemperatures isa latentproblemin theagrarianworld.Knowingin
advancewhetherornot lowtemperatureswilloccurhelps thefarmer toforeseeresources
and apply anti-frost control techniques early enough to ensuremaximumeffectiveness.
In this work an preliminary predictive model for temperature has been analyzed and
constructedusingaLongshort-termmemoryneuralnetwork.TheLSTMhasbeentested
usingactual temperaturedata providedbyan IoTsystemdeployedonvariousplots and
currently in operation. The preliminarymodel obtained by the LSTM for temperature
predictionwillbepartof theintelligentcomponentoftheIoTsysteminordertowarnand
alert the farmerassoonaspossible.The twoexperimentscarriedout to test theproposed
modelhaveobtainedsimilarresultsandwithquitesatisfactorygoodnessobtaininga99%
modelfitandanRMSEof less than0.8degreesCelsius. Inaddition, type2errors (where
M.Á.Guillén-Navarroetal. /AnLSTMDeepLearningScheme
forPredictionofLowTemperatures136
Intelligent Environments 2019
Workshop Proceedings of the 15th International Conference on Intelligent Environments
- Title
- Intelligent Environments 2019
- Subtitle
- Workshop Proceedings of the 15th International Conference on Intelligent Environments
- Authors
- Andrés Muñoz
- Sofia Ouhbi
- Wolfgang Minker
- Loubna Echabbi
- Miguel Navarro-Cía
- Publisher
- IOS Press BV
- Date
- 2019
- Language
- German
- License
- CC BY-NC 4.0
- ISBN
- 978-1-61499-983-6
- Size
- 16.0 x 24.0 cm
- Pages
- 416
- Category
- Tagungsbände