High temperatures remain relatively stable through the week, ranging from 56°F to 65°F. Dry weather expected throughout the week.
This week's forecast shows temperatures running 13 F above the historical average for November. Normal highs for this period are around 47 F with lows around 23 F.
1987 - Twenty-one cities, mostly in the Ohio Valley, reported record high temperatures for the date. The afternoon high of 80 degrees at Columbus OH was their warmest reading of record for so late in the season. Showers and thundershowers associated with a tropical depression south of Florida produced 4.28 inches of rain at Clewiston in 24 hours.
More on this and other weather history
Day: Sunny. High near 63, with temperatures falling to around 60 in the afternoon. East wind 2 to 6 mph.
Night: Partly cloudy. Low around 43, with temperatures rising to around 45 overnight. West northwest wind around 7 mph.
Day: Partly sunny. High near 63, with temperatures falling to around 60 in the afternoon. East wind around 6 mph.
Night: Mostly cloudy, with a low around 42. West southwest wind around 5 mph.
Day: Partly sunny, with a high near 65. South wind 2 to 10 mph.
Night: Mostly cloudy, with a low around 43.
Day: Mostly sunny, with a high near 59.
Night: Partly cloudy, with a low around 40.
Day: Partly sunny, with a high near 58.
Night: Partly cloudy, with a low around 39.
Day: Mostly sunny, with a high near 56.
Night: Partly cloudy, with a low around 39.
Day: Mostly sunny, with a high near 57.
Night: Mostly cloudy, with a low around 41.
Sun's High Temperature
98 at 6 Miles West-southwest Of Glamis, CA
Mon's Low Temperature
14 at 18 Miles West-southwest Of Dillon, MT
When the moon rises red and appears large, with clouds, expect rain in twelve hours.
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Current conditions: We use the nearest available station to your location - including professional MESONET/MADIS and local weather stations - often miles closer than regional airports.
Forecasts: National Weather Service point forecasts predict for your specific area, not broad regional zones, making them far more relevant to your location.