In the day job I work in enterprise big data. I was bored at the weekend and decided to point own of those tools at my solar panel data.
Call it an academic test panel, 50W.
What I have however is high resolution data for it's panel voltage, output current and output power for nearly a year.
The first question I asked it. ("it" being my coding).
"Is it sunnier in the morning or the afternoon?"
The answer, should really have been, "neither. It's sunniest at noon you idiot.", but that was not the results I got. At first it seemed to and I made a sad face as it would be complete statistical insignificance. However my lips up turned and my mouth opened into an "Oohhhh....." when I realised that "solar noon" is not at GMT "noon" for me. I am 8* West. My solar noon is around 12:35. However my peak solar output was 11am and 12pm almost neck and neck as opposed to 12pm to 1pm.
It means when I put the off grid panels on the garage roof I can bias them a few inches to the west to get the morning sun earlier from teh house shadow, rather than the evening sun over the hedge.
Of course this could very well also be the impact of the battery running full charged for half of the summer when it only gets topped up in the morning sun and then the panel goes open circuit.
Any other cool analysis I can do while I have this?
I did for example, run my mains consumption figures through some analysis. I was looking for individual appliances by grouping "deltas" when power use increases or decreases and then trying to pair them up to actual loads. That ended up suffering either too much noise with low granularity or being able to say if it's a 100W load or a 500W load and about nothing else. Still, with slightly less lofty goals I hope to return to this and at least pick out one or two high power devices, like the oven or dishwasher and see if I can then exact their individual consumption month by month.
Call it an academic test panel, 50W.
What I have however is high resolution data for it's panel voltage, output current and output power for nearly a year.
The first question I asked it. ("it" being my coding).
"Is it sunnier in the morning or the afternoon?"
The answer, should really have been, "neither. It's sunniest at noon you idiot.", but that was not the results I got. At first it seemed to and I made a sad face as it would be complete statistical insignificance. However my lips up turned and my mouth opened into an "Oohhhh....." when I realised that "solar noon" is not at GMT "noon" for me. I am 8* West. My solar noon is around 12:35. However my peak solar output was 11am and 12pm almost neck and neck as opposed to 12pm to 1pm.
It means when I put the off grid panels on the garage roof I can bias them a few inches to the west to get the morning sun earlier from teh house shadow, rather than the evening sun over the hedge.
Of course this could very well also be the impact of the battery running full charged for half of the summer when it only gets topped up in the morning sun and then the panel goes open circuit.
Any other cool analysis I can do while I have this?
I did for example, run my mains consumption figures through some analysis. I was looking for individual appliances by grouping "deltas" when power use increases or decreases and then trying to pair them up to actual loads. That ended up suffering either too much noise with low granularity or being able to say if it's a 100W load or a 500W load and about nothing else. Still, with slightly less lofty goals I hope to return to this and at least pick out one or two high power devices, like the oven or dishwasher and see if I can then exact their individual consumption month by month.
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