Research Article

Development of Regression Models considering Time-Lag and Aerosols for Predicting Heating Loads in Buildings

Table 10

Model summary for a DOE medium office building depending on time-lag.

Model summarya
ModelRR squareAdjusted R squareStd. error of the estimateChange statisticsDurbin–Watson
R square changeF changedf1df2Sig. F change

Time-lag00.537b0.2890.28812945018.5110.289750.9551120,3400.0000.706

Time-lag10.537b0.2890.28812947428.0280.289750.0701120,3390.0000.731

Time-lag20.579b0.3350.33512518253.7390.335931.4281120,3380.0000.677

aDependent variable: heating load (medium); bpredictors: (constant), visibility, diffuse radiation, atmospheric station pressure, wind speed, total sky cover, dry bulb temperatures, direct normal radiation, relative humidity, global horizontal radiation, horizontal infrared radiation, and dew point temperatures.