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Commit a08bba29 authored by jou-fsa's avatar jou-fsa
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Change the code to run parallel processing with single prosumer

parent 58c6afe6
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Subproject commit 3edd3306b01c6f278b89cd6a5564eed1dab6b905
Subproject commit 6af063568b121ae3a6d224dcc1e27034f7ecbfe4
Subproject commit 3584559e580a898c968d5f030d422478d84ee0d3
Subproject commit 38e84d6b9223a4badf57c20a6752124b31bb3ed7
Subproject commit 4fb0477cfaee77e4ddc1e4d4afc8c59e1d3ace56
Subproject commit 2562cac5ba7b6280539585cb0496dcd7b0ffdda0
Subproject commit 97869b2321320c33800980122b4537fe5dae816a
Subproject commit 9876be800f7813c0f97473c69cb6563d25600afd
......@@ -6,7 +6,7 @@ timestamp,day_ahead_price
01-01-2019 04:00:00,0.3085
01-01-2019 05:00:00,0.3014
01-01-2019 06:00:00,0.3017
01-01-2019 07:00:00,0.30
01-01-2019 07:00:00,0.3
01-01-2019 08:00:00,0.3065
01-01-2019 09:00:00,0.3065
01-01-2019 10:00:00,0.3027
......@@ -202,7 +202,7 @@ timestamp,day_ahead_price
09-01-2019 08:00:00,0.4792
09-01-2019 09:00:00,0.4568
09-01-2019 10:00:00,0.4361
09-01-2019 11:00:00,0.40
09-01-2019 11:00:00,0.4
09-01-2019 12:00:00,0.3706
09-01-2019 13:00:00,0.3345
09-01-2019 14:00:00,0.322
......@@ -248,7 +248,7 @@ timestamp,day_ahead_price
11-01-2019 06:00:00,0.2922
11-01-2019 07:00:00,0.3122
11-01-2019 08:00:00,0.3568
11-01-2019 09:00:00,0.40
11-01-2019 09:00:00,0.4
11-01-2019 10:00:00,0.3801
11-01-2019 11:00:00,0.379
11-01-2019 12:00:00,0.3608
......@@ -453,7 +453,7 @@ timestamp,day_ahead_price
19-01-2019 19:00:00,0.4389
19-01-2019 20:00:00,0.4114
19-01-2019 21:00:00,0.3674
19-01-2019 22:00:00,0.40
19-01-2019 22:00:00,0.4
19-01-2019 23:00:00,0.3615
20-01-2019 00:00:00,0.3424
20-01-2019 01:00:00,0.3401
......@@ -463,7 +463,7 @@ timestamp,day_ahead_price
20-01-2019 05:00:00,0.3423
20-01-2019 06:00:00,0.4563
20-01-2019 07:00:00,0.5597
20-01-2019 08:00:00,0.60
20-01-2019 08:00:00,0.6
20-01-2019 09:00:00,0.5701
20-01-2019 10:00:00,0.5063
20-01-2019 11:00:00,0.4817
......@@ -477,7 +477,7 @@ timestamp,day_ahead_price
20-01-2019 19:00:00,0.5402
20-01-2019 20:00:00,0.4868
20-01-2019 21:00:00,0.4151
20-01-2019 22:00:00,0.40
20-01-2019 22:00:00,0.4
20-01-2019 23:00:00,0.3403
21-01-2019 00:00:00,0.3317
21-01-2019 01:00:00,0.3301
......@@ -660,7 +660,7 @@ timestamp,day_ahead_price
28-01-2019 10:00:00,0.429
28-01-2019 11:00:00,0.3993
28-01-2019 12:00:00,0.3398
28-01-2019 13:00:00,0.30
28-01-2019 13:00:00,0.3
28-01-2019 14:00:00,0.28
28-01-2019 15:00:00,0.2791
28-01-2019 16:00:00,0.2968
......@@ -765,7 +765,7 @@ timestamp,day_ahead_price
01-02-2019 19:00:00,0.1599
01-02-2019 20:00:00,0.042
01-02-2019 21:00:00,-0.08
01-02-2019 22:00:00,0.0
01-02-2019 22:00:00,0
01-02-2019 23:00:00,-0.1116
02-02-2019 00:00:00,-0.497
02-02-2019 01:00:00,-0.101
......@@ -850,7 +850,7 @@ timestamp,day_ahead_price
05-02-2019 08:00:00,0.4916
05-02-2019 09:00:00,0.4478
05-02-2019 10:00:00,0.4137
05-02-2019 11:00:00,0.40
05-02-2019 11:00:00,0.4
05-02-2019 12:00:00,0.3707
05-02-2019 13:00:00,0.3516
05-02-2019 14:00:00,0.3517
......@@ -1250,7 +1250,7 @@ timestamp,day_ahead_price
22-02-2019 00:00:00,0.802
22-02-2019 01:00:00,0.012
22-02-2019 02:00:00,0.01
22-02-2019 03:00:00,0.0
22-02-2019 03:00:00,0
22-02-2019 04:00:00,-0.299
22-02-2019 05:00:00,-0.246
22-02-2019 06:00:00,-0.799
......@@ -1270,7 +1270,7 @@ timestamp,day_ahead_price
22-02-2019 20:00:00,0.006
22-02-2019 21:00:00,-0.009
22-02-2019 22:00:00,0.004
22-02-2019 23:00:00,0.0
22-02-2019 23:00:00,0
23-02-2019 00:00:00,-0.487
23-02-2019 01:00:00,-0.299
23-02-2019 02:00:00,-0.262
......@@ -1644,7 +1644,7 @@ timestamp,day_ahead_price
10-03-2019 10:00:00,0.301
10-03-2019 11:00:00,0.3177
10-03-2019 12:00:00,0.3055
10-03-2019 13:00:00,0.30
10-03-2019 13:00:00,0.3
10-03-2019 14:00:00,0.2969
10-03-2019 15:00:00,0.2484
10-03-2019 16:00:00,0.2264
......@@ -1778,7 +1778,7 @@ timestamp,day_ahead_price
16-03-2019 00:00:00,0.2001
16-03-2019 01:00:00,0.2013
16-03-2019 02:00:00,0.2004
16-03-2019 03:00:00,0.20
16-03-2019 03:00:00,0.2
16-03-2019 04:00:00,0.1992
16-03-2019 05:00:00,0.224
16-03-2019 06:00:00,0.3385
......@@ -1872,7 +1872,7 @@ timestamp,day_ahead_price
19-03-2019 22:00:00,0.287
19-03-2019 23:00:00,0.271
20-03-2019 00:00:00,0.2518
20-03-2019 01:00:00,0.20
20-03-2019 01:00:00,0.2
20-03-2019 02:00:00,0.2087
20-03-2019 03:00:00,0.2072
20-03-2019 04:00:00,0.25
......@@ -1913,7 +1913,7 @@ timestamp,day_ahead_price
21-03-2019 15:00:00,0.57
21-03-2019 16:00:00,0.83
21-03-2019 17:00:00,0.1501
21-03-2019 18:00:00,0.20
21-03-2019 18:00:00,0.2
21-03-2019 19:00:00,0.2012
21-03-2019 20:00:00,0.1534
21-03-2019 21:00:00,0.929
......@@ -1944,12 +1944,12 @@ timestamp,day_ahead_price
22-03-2019 22:00:00,0.1479
22-03-2019 23:00:00,0.1105
23-03-2019 00:00:00,0.1207
23-03-2019 01:00:00,0.10
23-03-2019 01:00:00,0.1
23-03-2019 02:00:00,0.1017
23-03-2019 03:00:00,0.928
23-03-2019 04:00:00,0.928
23-03-2019 05:00:00,0.1276
23-03-2019 06:00:00,0.20
23-03-2019 06:00:00,0.2
23-03-2019 07:00:00,0.2399
23-03-2019 08:00:00,0.2008
23-03-2019 09:00:00,0.1584
......@@ -2058,7 +2058,7 @@ timestamp,day_ahead_price
27-03-2019 16:00:00,0.1808
27-03-2019 17:00:00,0.218
27-03-2019 18:00:00,0.2672
27-03-2019 19:00:00,0.30
27-03-2019 19:00:00,0.3
27-03-2019 20:00:00,0.2494
27-03-2019 21:00:00,0.2319
27-03-2019 22:00:00,0.2491
......@@ -2146,7 +2146,7 @@ timestamp,day_ahead_price
31-03-2019 08:00:00,0.2575
31-03-2019 09:00:00,0.2394
31-03-2019 10:00:00,0.1978
31-03-2019 11:00:00,0.20
31-03-2019 11:00:00,0.2
31-03-2019 12:00:00,0.1839
31-03-2019 13:00:00,0.175
31-03-2019 14:00:00,0.176
......@@ -2244,7 +2244,7 @@ timestamp,day_ahead_price
04-04-2019 10:00:00,0.1306
04-04-2019 11:00:00,0.1428
04-04-2019 12:00:00,0.1082
04-04-2019 13:00:00,0.10
04-04-2019 13:00:00,0.1
04-04-2019 14:00:00,0.988
04-04-2019 15:00:00,0.1574
04-04-2019 16:00:00,0.2151
......@@ -2292,7 +2292,7 @@ timestamp,day_ahead_price
06-04-2019 10:00:00,0.1119
06-04-2019 11:00:00,0.1402
06-04-2019 12:00:00,0.1055
06-04-2019 13:00:00,0.10
06-04-2019 13:00:00,0.1
06-04-2019 14:00:00,0.1183
06-04-2019 15:00:00,0.1483
06-04-2019 16:00:00,0.2168
......@@ -2371,7 +2371,7 @@ timestamp,day_ahead_price
09-04-2019 17:00:00,0.2658
09-04-2019 18:00:00,0.3092
09-04-2019 19:00:00,0.3143
09-04-2019 20:00:00,0.30
09-04-2019 20:00:00,0.3
09-04-2019 21:00:00,0.2792
09-04-2019 22:00:00,0.25
09-04-2019 23:00:00,0.2511
......@@ -2415,7 +2415,7 @@ timestamp,day_ahead_price
11-04-2019 13:00:00,0.51
11-04-2019 14:00:00,0.728
11-04-2019 15:00:00,0.1401
11-04-2019 16:00:00,0.20
11-04-2019 16:00:00,0.2
11-04-2019 17:00:00,0.2897
11-04-2019 18:00:00,0.3511
11-04-2019 19:00:00,0.3595
......@@ -2436,7 +2436,7 @@ timestamp,day_ahead_price
12-04-2019 10:00:00,0.493
12-04-2019 11:00:00,0.498
12-04-2019 12:00:00,0.184
12-04-2019 13:00:00,0.0
12-04-2019 13:00:00,0
12-04-2019 14:00:00,0.017
12-04-2019 15:00:00,0.3
12-04-2019 16:00:00,0.414
......@@ -2644,7 +2644,7 @@ timestamp,day_ahead_price
21-04-2019 02:00:00,-0.059
21-04-2019 03:00:00,0.372
21-04-2019 04:00:00,0.473
21-04-2019 05:00:00,0.10
21-04-2019 05:00:00,0.1
21-04-2019 06:00:00,0.1613
21-04-2019 07:00:00,0.1652
21-04-2019 08:00:00,0.792
......@@ -2720,12 +2720,12 @@ timestamp,day_ahead_price
24-04-2019 06:00:00,0.3585
24-04-2019 07:00:00,0.31
24-04-2019 08:00:00,0.2184
24-04-2019 09:00:00,0.20
24-04-2019 09:00:00,0.2
24-04-2019 10:00:00,0.1845
24-04-2019 11:00:00,0.1615
24-04-2019 12:00:00,0.1455
24-04-2019 13:00:00,0.1202
24-04-2019 14:00:00,0.10
24-04-2019 14:00:00,0.1
24-04-2019 15:00:00,0.1181
24-04-2019 16:00:00,0.1562
24-04-2019 17:00:00,0.1997
......@@ -2903,8 +2903,8 @@ timestamp,day_ahead_price
01-05-2019 21:00:00,0.2091
01-05-2019 22:00:00,0.16
01-05-2019 23:00:00,0.122
02-05-2019 00:00:00,0.10
02-05-2019 01:00:00,0.10
02-05-2019 00:00:00,0.1
02-05-2019 01:00:00,0.1
02-05-2019 02:00:00,0.8
02-05-2019 03:00:00,0.8
02-05-2019 04:00:00,0.8
......@@ -2934,11 +2934,11 @@ timestamp,day_ahead_price
03-05-2019 04:00:00,0.1337
03-05-2019 05:00:00,0.1156
03-05-2019 06:00:00,0.1094
03-05-2019 07:00:00,0.10
03-05-2019 07:00:00,0.1
03-05-2019 08:00:00,0.94
03-05-2019 09:00:00,0.97
03-05-2019 10:00:00,0.10
03-05-2019 11:00:00,0.10
03-05-2019 10:00:00,0.1
03-05-2019 11:00:00,0.1
03-05-2019 12:00:00,0.706
03-05-2019 13:00:00,0.584
03-05-2019 14:00:00,0.557
......@@ -3000,7 +3000,7 @@ timestamp,day_ahead_price
05-05-2019 22:00:00,0.2324
05-05-2019 23:00:00,0.2099
06-05-2019 00:00:00,0.2006
06-05-2019 01:00:00,0.20
06-05-2019 01:00:00,0.2
06-05-2019 02:00:00,0.1904
06-05-2019 03:00:00,0.1704
06-05-2019 04:00:00,0.201
......@@ -3154,7 +3154,7 @@ timestamp,day_ahead_price
12-05-2019 08:00:00,0.24
12-05-2019 09:00:00,0.2254
12-05-2019 10:00:00,0.22
12-05-2019 11:00:00,0.20
12-05-2019 11:00:00,0.2
12-05-2019 12:00:00,0.1803
12-05-2019 13:00:00,0.1703
12-05-2019 14:00:00,0.1705
......@@ -3238,7 +3238,7 @@ timestamp,day_ahead_price
15-05-2019 20:00:00,0.2525
15-05-2019 21:00:00,0.2185
15-05-2019 22:00:00,0.1886
15-05-2019 23:00:00,0.20
15-05-2019 23:00:00,0.2
16-05-2019 00:00:00,0.1814
16-05-2019 01:00:00,0.1708
16-05-2019 02:00:00,0.1643
......@@ -3382,7 +3382,7 @@ timestamp,day_ahead_price
21-05-2019 20:00:00,0.2952
21-05-2019 21:00:00,0.2412
21-05-2019 22:00:00,0.2278
21-05-2019 23:00:00,0.20
21-05-2019 23:00:00,0.2
22-05-2019 00:00:00,0.1703
22-05-2019 01:00:00,0.155
22-05-2019 02:00:00,0.1402
......@@ -3464,7 +3464,7 @@ timestamp,day_ahead_price
25-05-2019 06:00:00,0.2109
25-05-2019 07:00:00,0.2206
25-05-2019 08:00:00,0.2092
25-05-2019 09:00:00,0.20
25-05-2019 09:00:00,0.2
25-05-2019 10:00:00,0.2094
25-05-2019 11:00:00,0.175
25-05-2019 12:00:00,0.1547
......@@ -3516,7 +3516,7 @@ timestamp,day_ahead_price
27-05-2019 10:00:00,0.2308
27-05-2019 11:00:00,0.2204
27-05-2019 12:00:00,0.2071
27-05-2019 13:00:00,0.20
27-05-2019 13:00:00,0.2
27-05-2019 14:00:00,0.1999
27-05-2019 15:00:00,0.1965
27-05-2019 16:00:00,0.214
......@@ -3813,7 +3813,7 @@ timestamp,day_ahead_price
08-06-2019 19:00:00,0.3523
08-06-2019 20:00:00,0.346
08-06-2019 21:00:00,0.3305
08-06-2019 22:00:00,0.30
08-06-2019 22:00:00,0.3
08-06-2019 23:00:00,0.2839
09-06-2019 00:00:00,0.2579
09-06-2019 01:00:00,0.2408
......@@ -3870,7 +3870,7 @@ timestamp,day_ahead_price
11-06-2019 04:00:00,0.1896
11-06-2019 05:00:00,0.2156
11-06-2019 06:00:00,0.2606
11-06-2019 07:00:00,0.30
11-06-2019 07:00:00,0.3
11-06-2019 08:00:00,0.2896
11-06-2019 09:00:00,0.2606
11-06-2019 10:00:00,0.2551
......@@ -3918,7 +3918,7 @@ timestamp,day_ahead_price
13-06-2019 04:00:00,0.189
13-06-2019 05:00:00,0.1933
13-06-2019 06:00:00,0.1986
13-06-2019 07:00:00,0.20
13-06-2019 07:00:00,0.2
13-06-2019 08:00:00,0.191
13-06-2019 09:00:00,0.185
13-06-2019 10:00:00,0.1811
......@@ -4150,7 +4150,7 @@ timestamp,day_ahead_price
22-06-2019 20:00:00,0.3739
22-06-2019 21:00:00,0.3638
22-06-2019 22:00:00,0.3301
22-06-2019 23:00:00,0.30
22-06-2019 23:00:00,0.3
23-06-2019 00:00:00,0.2712
23-06-2019 01:00:00,0.2588
23-06-2019 02:00:00,0.244
......@@ -4166,7 +4166,7 @@ timestamp,day_ahead_price
23-06-2019 12:00:00,0.2823
23-06-2019 13:00:00,0.2782
23-06-2019 14:00:00,0.2865
23-06-2019 15:00:00,0.30
23-06-2019 15:00:00,0.3
23-06-2019 16:00:00,0.33
23-06-2019 17:00:00,0.3659
23-06-2019 18:00:00,0.4451
......@@ -4680,7 +4680,7 @@ timestamp,day_ahead_price
14-07-2019 22:00:00,0.3702
14-07-2019 23:00:00,0.3555
15-07-2019 00:00:00,0.3022
15-07-2019 01:00:00,0.30
15-07-2019 01:00:00,0.3
15-07-2019 02:00:00,0.2873
15-07-2019 03:00:00,0.2984
15-07-2019 04:00:00,0.3429
......@@ -5420,7 +5420,7 @@ timestamp,day_ahead_price
14-08-2019 18:00:00,0.4608
14-08-2019 19:00:00,0.43
14-08-2019 20:00:00,0.4206
14-08-2019 21:00:00,0.40
14-08-2019 21:00:00,0.4
14-08-2019 22:00:00,0.3535
14-08-2019 23:00:00,0.3836
15-08-2019 00:00:00,0.339
......@@ -5730,7 +5730,7 @@ timestamp,day_ahead_price
27-08-2019 16:00:00,0.5959
27-08-2019 17:00:00,0.7039
27-08-2019 18:00:00,0.8991
27-08-2019 19:00:00,0.90
27-08-2019 19:00:00,0.9
27-08-2019 20:00:00,0.69
27-08-2019 21:00:00,0.579
27-08-2019 22:00:00,0.4613
......@@ -5772,7 +5772,7 @@ timestamp,day_ahead_price
29-08-2019 10:00:00,0.3585
29-08-2019 11:00:00,0.3099
29-08-2019 12:00:00,0.3029
29-08-2019 13:00:00,0.30
29-08-2019 13:00:00,0.3
29-08-2019 14:00:00,0.3167
29-08-2019 15:00:00,0.3471
29-08-2019 16:00:00,0.37
......@@ -5819,7 +5819,7 @@ timestamp,day_ahead_price
31-08-2019 09:00:00,0.6653
31-08-2019 10:00:00,0.6541
31-08-2019 11:00:00,0.6276
31-08-2019 12:00:00,0.60
31-08-2019 12:00:00,0.6
31-08-2019 13:00:00,0.5748
31-08-2019 14:00:00,0.5499
31-08-2019 15:00:00,0.5895
......@@ -5848,7 +5848,7 @@ timestamp,day_ahead_price
01-09-2019 14:00:00,0.47
01-09-2019 15:00:00,0.4858
01-09-2019 16:00:00,0.5184
01-09-2019 17:00:00,0.60
01-09-2019 17:00:00,0.6
01-09-2019 18:00:00,0.6702
01-09-2019 19:00:00,0.6593
01-09-2019 20:00:00,0.5532
......@@ -5998,7 +5998,7 @@ timestamp,day_ahead_price
07-09-2019 20:00:00,0.4601
07-09-2019 21:00:00,0.3778
07-09-2019 22:00:00,0.3224
07-09-2019 23:00:00,0.30
07-09-2019 23:00:00,0.3
08-09-2019 00:00:00,0.2863
08-09-2019 01:00:00,0.2626
08-09-2019 02:00:00,0.2515
......@@ -6071,7 +6071,7 @@ timestamp,day_ahead_price
10-09-2019 21:00:00,0.4989
10-09-2019 22:00:00,0.4398
10-09-2019 23:00:00,0.4584
11-09-2019 00:00:00,0.40
11-09-2019 00:00:00,0.4
11-09-2019 01:00:00,0.3938
11-09-2019 02:00:00,0.3679
11-09-2019 03:00:00,0.3685
......@@ -6136,7 +6136,7 @@ timestamp,day_ahead_price
13-09-2019 14:00:00,-0.129
13-09-2019 15:00:00,0.1069
13-09-2019 16:00:00,0.342
13-09-2019 17:00:00,0.40
13-09-2019 17:00:00,0.4
13-09-2019 18:00:00,0.486
13-09-2019 19:00:00,0.5092
13-09-2019 20:00:00,0.4808
......@@ -6148,7 +6148,7 @@ timestamp,day_ahead_price
14-09-2019 02:00:00,0.3235
14-09-2019 03:00:00,0.3232
14-09-2019 04:00:00,0.3607
14-09-2019 05:00:00,0.50
14-09-2019 05:00:00,0.5
14-09-2019 06:00:00,0.5834
14-09-2019 07:00:00,0.6205
14-09-2019 08:00:00,0.5593
......@@ -6352,9 +6352,9 @@ timestamp,day_ahead_price
22-09-2019 14:00:00,0.4832
22-09-2019 15:00:00,0.5393
22-09-2019 16:00:00,0.5892
22-09-2019 17:00:00,0.70
22-09-2019 17:00:00,0.7
22-09-2019 18:00:00,0.864
22-09-2019 19:00:00,0.70
22-09-2019 19:00:00,0.7
22-09-2019 20:00:00,0.5547
22-09-2019 21:00:00,0.5019
22-09-2019 22:00:00,0.4055
......@@ -6474,7 +6474,7 @@ timestamp,day_ahead_price
27-09-2019 16:00:00,0.3763
27-09-2019 17:00:00,0.4623
27-09-2019 18:00:00,0.5195
27-09-2019 19:00:00,0.50
27-09-2019 19:00:00,0.5
27-09-2019 20:00:00,0.4648
27-09-2019 21:00:00,0.4176
27-09-2019 22:00:00,0.3784
......@@ -6651,7 +6651,7 @@ timestamp,day_ahead_price
05-10-2019 01:00:00,0.6
05-10-2019 02:00:00,0.623
05-10-2019 03:00:00,0.782
05-10-2019 04:00:00,0.20
05-10-2019 04:00:00,0.2
05-10-2019 05:00:00,0.3507
05-10-2019 06:00:00,0.4441
05-10-2019 07:00:00,0.4702
......@@ -6758,7 +6758,7 @@ timestamp,day_ahead_price
09-10-2019 12:00:00,0.3891
09-10-2019 13:00:00,0.3776
09-10-2019 14:00:00,0.3864
09-10-2019 15:00:00,0.40
09-10-2019 15:00:00,0.4
09-10-2019 16:00:00,0.4363
09-10-2019 17:00:00,0.4592
09-10-2019 18:00:00,0.5129
......@@ -6803,7 +6803,7 @@ timestamp,day_ahead_price
11-10-2019 09:00:00,0.3152
11-10-2019 10:00:00,0.3367
11-10-2019 11:00:00,0.3341
11-10-2019 12:00:00,0.30
11-10-2019 12:00:00,0.3
11-10-2019 13:00:00,0.2777
11-10-2019 14:00:00,0.2802
11-10-2019 15:00:00,0.2958
......@@ -6890,7 +6890,7 @@ timestamp,day_ahead_price
15-10-2019 00:00:00,0.2748
15-10-2019 01:00:00,0.2735
15-10-2019 02:00:00,0.2754
15-10-2019 03:00:00,0.30
15-10-2019 03:00:00,0.3
15-10-2019 04:00:00,0.3168
15-10-2019 05:00:00,0.3649
15-10-2019 06:00:00,0.4305
......@@ -6929,7 +6929,7 @@ timestamp,day_ahead_price
16-10-2019 15:00:00,0.4756
16-10-2019 16:00:00,0.499
16-10-2019 17:00:00,0.5428
16-10-2019 18:00:00,0.60
16-10-2019 18:00:00,0.6
16-10-2019 19:00:00,0.4957
16-10-2019 20:00:00,0.4608
16-10-2019 21:00:00,0.4258
......@@ -7274,7 +7274,7 @@ timestamp,day_ahead_price
31-10-2019 00:00:00,0.3504
31-10-2019 01:00:00,0.315
31-10-2019 02:00:00,0.298
31-10-2019 03:00:00,0.30
31-10-2019 03:00:00,0.3
31-10-2019 04:00:00,0.2854
31-10-2019 05:00:00,0.2844
31-10-2019 06:00:00,0.3053
......@@ -7524,14 +7524,14 @@ timestamp,day_ahead_price
10-11-2019 10:00:00,0.5297
10-11-2019 11:00:00,0.5239
10-11-2019 12:00:00,0.5082
10-11-2019 13:00:00,0.50
10-11-2019 13:00:00,0.5
10-11-2019 14:00:00,0.5121
10-11-2019 15:00:00,0.5716
10-11-2019 16:00:00,0.5747
10-11-2019 17:00:00,0.7972
10-11-2019 18:00:00,0.6833
10-11-2019 19:00:00,0.5785
10-11-2019 20:00:00,0.50
10-11-2019 20:00:00,0.5
10-11-2019 21:00:00,0.4478
10-11-2019 22:00:00,0.4289
10-11-2019 23:00:00,0.3703
......@@ -7544,8 +7544,8 @@ timestamp,day_ahead_price
11-11-2019 06:00:00,0.4548
11-11-2019 07:00:00,0.5095
11-11-2019 08:00:00,0.5176
11-11-2019 09:00:00,0.50
11-11-2019 10:00:00,0.50
11-11-2019 09:00:00,0.5
11-11-2019 10:00:00,0.5
11-11-2019 11:00:00,0.5043
11-11-2019 12:00:00,0.48
11-11-2019 13:00:00,0.4824
......@@ -7562,7 +7562,7 @@ timestamp,day_ahead_price
12-11-2019 00:00:00,0.3267
12-11-2019 01:00:00,0.3299
12-11-2019 02:00:00,0.3116
12-11-2019 03:00:00,0.30
12-11-2019 03:00:00,0.3
12-11-2019 04:00:00,0.2918
12-11-2019 05:00:00,0.3345
12-11-2019 06:00:00,0.3982
......@@ -7697,7 +7697,7 @@ timestamp,day_ahead_price
17-11-2019 15:00:00,0.4328
17-11-2019 16:00:00,0.438
17-11-2019 17:00:00,0.4725
17-11-2019 18:00:00,0.50
17-11-2019 18:00:00,0.5
17-11-2019 19:00:00,0.4751
17-11-2019 20:00:00,0.4383
17-11-2019 21:00:00,0.366
......@@ -8053,7 +8053,7 @@ timestamp,day_ahead_price
02-12-2019 11:00:00,0.9519
02-12-2019 12:00:00,0.8495
02-12-2019 13:00:00,0.829
02-12-2019 14:00:00,0.90
02-12-2019 14:00:00,0.9
02-12-2019 15:00:00,0.8809
02-12-2019 16:00:00,0.1054
02-12-2019 17:00:00,0.11056
......@@ -8344,7 +8344,7 @@ timestamp,day_ahead_price
14-12-2019 14:00:00,0.4905
14-12-2019 15:00:00,0.5413
14-12-2019 16:00:00,0.54
14-12-2019 17:00:00,0.60
14-12-2019 17:00:00,0.6
14-12-2019 18:00:00,0.5903
14-12-2019 19:00:00,0.5478
14-12-2019 20:00:00,0.4932
......@@ -8423,7 +8423,7 @@ timestamp,day_ahead_price
17-12-2019 21:00:00,0.4504
17-12-2019 22:00:00,0.451
17-12-2019 23:00:00,0.3896
18-12-2019 00:00:00,0.40
18-12-2019 00:00:00,0.4
18-12-2019 01:00:00,0.367
18-12-2019 02:00:00,0.3658
18-12-2019 03:00:00,0.3577
......@@ -8542,7 +8542,7 @@ timestamp,day_ahead_price
22-12-2019 20:00:00,0.4787
22-12-2019 21:00:00,0.4228
22-12-2019 22:00:00,0.4398
22-12-2019 23:00:00,0.40
22-12-2019 23:00:00,0.4
23-12-2019 00:00:00,0.386
23-12-2019 01:00:00,0.342
23-12-2019 02:00:00,0.3357
......@@ -8652,7 +8652,7 @@ timestamp,day_ahead_price
27-12-2019 10:00:00,-0.1984
27-12-2019 11:00:00,-0.121
27-12-2019 12:00:00,-0.2668
27-12-2019 13:00:00,-0.30
27-12-2019 13:00:00,-0.3
27-12-2019 14:00:00,-0.3306
27-12-2019 15:00:00,-0.2996
27-12-2019 16:00:00,-0.777
......@@ -8728,7 +8728,7 @@ timestamp,day_ahead_price
30-12-2019 14:00:00,0.5395
30-12-2019 15:00:00,0.5561
30-12-2019 16:00:00,0.5608
30-12-2019 17:00:00,0.60
30-12-2019 17:00:00,0.6
30-12-2019 18:00:00,0.5632
30-12-2019 19:00:00,0.536
30-12-2019 20:00:00,0.5238
......
......@@ -5,6 +5,7 @@ import Model_Library.Prosumer.main as main
import Model_Library.District.main_district as main_district
from functools import partial
from multiprocessing import Pool
import ray
from tqdm import tqdm
import os
......@@ -20,60 +21,37 @@ def process_each_prosumer(prosumer_name, prosumer_specification, input_profiles,
return prosumer.prosumer
t_start = pd.Timestamp("2019-01-01 00:00:00") # start time of simulation
t_horizon = 8760 # number of time steps to be simulated
t_horizon = 100 # number of time steps to be simulated
t_step = 1 # length of a time step in hours
'''
input_profile_dict = {'irradiance_1': ['irradiance', 'input_files/data/irradiance/Lindenberg2006BSRN_Irradiance_60sec.csv'],
'temperature_1': ['air_temperature', 'input_files/data/temperature/temperature.csv'],
'demand_electric_1': ['elec_demand', 'generate', 3000],
'demand_heat_1': ['therm_demand', 'generate', 6000, 'temperature_1'],
'demand_hot_water_1': ['hot_water_demand', 'generate', 1500, 'temperature_1'],
'irradiance_2': ['irradiance', 'input_files/data/irradiance/Lindenberg2006BSRN_Irradiance_60sec.csv'],
'temperature_2': ['air_temperature', 'input_files/data/temperature/temperature.csv'],
'demand_electric_2': ['elec_demand', 'generate', 3000],
'demand_heat_2': ['therm_demand', 'generate', 6000, 'temperature_2'],
'demand_hot_water_2': ['hot_water_demand', 'generate', 1500, 'temperature_2'],
'irradiance_3': ['irradiance', 'input_files/data/irradiance/Lindenberg2006BSRN_Irradiance_60sec.csv'],
'temperature_3': ['air_temperature', 'input_files/data/temperature/temperature.csv'],
'demand_electric_3': ['elec_demand', 'generate', 0],
'demand_heat_3': ['therm_demand', 'generate', 0, 'temperature_3'],
'demand_hot_water_3': ['hot_water_demand', 'generate', 0, 'temperature_3'],
'elec_price_1': ['elec_price', 'input_files/data/prices/day-ahead/hourly_price.csv']}'''
# 'topology_path': path to directory that contains the matrices that define the prosumer topology
# 'config_path': path to global configurations like prices, injection prices, emission costs, etc.
'''
prosumer_dict = {'SCN2_CAT1_PV11_3000_6000':{'topology_path': 'input_files/models/prosumer_models/SCN2_CAT1_PV11',
'config_path': 'input_files/models/prosumer_models/SCN2_CAT1_PV11/config.csv',
'profiles': {'irradiance': 'irradiance_1',
'air_temperature': 'temperature_1',
'elec_demand': 'demand_electric_1',
'therm_demand': 'demand_heat_1',
'hot_water_demand': 'demand_hot_water_1'}},
'SCN0_CAT1_3000_6000': {'topology_path': 'input_files/models/prosumer_models/SCN0_CAT1',
'config_path': 'input_files/models/prosumer_models/SCN0_CAT1/config.csv',
'profiles': {'irradiance': 'irradiance_2',
'air_temperature': 'temperature_2',
'elec_demand': 'demand_electric_2',
'therm_demand': 'demand_heat_2',
'hot_water_demand': 'demand_hot_water_2'}}}'''
# start community at 17:51
community=[77, 215, 179]
for c in community:
#change inputpath
pass
#--------------------------------change line 67 of main to change output folder----------------------------------------#
prosumer_dict = {}
inputpath_dataframe='C:/GIT/ineed-dc-framework/Tooling/quarter_data_extraction/DataFrame/OUTPUT/OUTPUT_S3B/Quarter_Prosumers/running_info.csv'
inputpath_dataframe='/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/models/prosumer_models/Building_2019/running_77_2019.csv'
b=pd.read_csv(inputpath_dataframe)
input_profile_dict = {'irradiance': ['irradiance', 'input_files/data/irradiance/irr_ren_ninja_avg_Germany.csv'],
'temperature': ['air_temperature', 'input_files/data/temperature/temperature_ren_ninja_avrg_germany.csv'],
'elec_price_1': ['elec_price', 'input_files/data/prices/day-ahead/hourly_price.csv']}
input_profile_dict = {'irradiance': ['irradiance', '/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/data/irradiance/irr_ren_ninja_avg_Germany.csv'],
'temperature': ['air_temperature', '/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/data/temperature/temperature_ren_ninja_avrg_germany.csv'],
'elec_price_1': ['elec_price', '/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/data/prices/day-ahead/hourly_price.csv']}
for i in b.index:
input_profile_dict['demand_electric_'+ str(i)] = ['elec_demand', 'generate', b.loc[i,'referance_el_demand'], b.loc[i,'profile_el']]
input_profile_dict['demand_heat_'+ str(i)] = ['therm_demand', 'generate', b.loc[i,'referance_heat_demand'],b.loc[i,'profile_th'], b.loc[i,'Building_type'], 'temperature']
input_profile_dict['demand_hot_water_'+ str(i)] = ['hot_water_demand', 'generate', b.loc[i,'referance_hot_water'], b.loc[i,'profile_th'], b.loc[i,'Building_type'], 'temperature']
prosumer_dict[b.loc[i,'ID_Building']]= {'topology_path': 'Tooling/quarter_data_extraction/DataFrame/OUTPUT/OUTPUT_S3B/Quarter_Prosumers/'+str(b.loc[i,'ID_Building']),
'config_path': 'Tooling/quarter_data_extraction/DataFrame/OUTPUT/OUTPUT_S3B/Quarter_Prosumers/'+str(b.loc[i,'ID_Building'])+'/config.csv',
prosumer_dict[b.loc[i,'name_building']]= {'topology_path': '/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/models/prosumer_models/Building_2019/'+str(b.loc[i,'ID_Building']),
'config_path': '/home/jou-fsa/PycharmProjects/ineed-dc-framework/input_files/models/prosumer_models/Building_2019/'+str(b.loc[i,'ID_Building'])+'/config.csv',
'profiles':{'irradiance': 'irradiance',
'air_temperature': 'temperature',
'elec_demand': 'demand_electric_'+ str(i),
'therm_demand':'demand_heat_'+ str(i),
'hot_water_demand': 'demand_hot_water_'+ str(i)}}
'hot_water_demand': 'demand_hot_water_'+ str(i),
'elec_prices_da': 'elec_price_1'}}
#'elec_prices_da': 'elec_price_1'
input_profiles = Tooling.input_profile_processor.input_profile_processor.process_input_profiles(input_profile_dict, t_start, t_horizon, t_step)
prosumer_strategy = ['annuity']
......@@ -81,17 +59,30 @@ parallel_processing = False
# Run multiple independent prosumers in parallel on multiple cores
prosumers = dict.fromkeys(prosumer_dict.keys())
count_process=len(prosumer_dict.keys())
#count_process = 10
ray.init(num_cpus=count_process, local_mode=(not(parallel_processing)))
if parallel_processing:
count_processes = len(prosumer_dict.keys())
pool = Pool(os.cpu_count())
parallel_func = partial(process_each_prosumer, input_profiles = input_profiles, t_start = t_start, t_horizon = t_horizon, t_step = t_step, prosumer_strategy = prosumer_strategy)
mapped_values = list(tqdm(pool.map(parallel_func, list(prosumer_dict.keys()), list(prosumer_dict.values())), total = count_processes))
process_each_prosumer_id=ray.remote(process_each_prosumer)
results_ids=[process_each_prosumer_id.remote(prosumer_name, prosumer_dict[prosumer_name], input_profiles, t_start, t_horizon, t_step, prosumer_strategy) for prosumer_name in prosumer_dict.keys()]
while results_ids:
finished, results_ids = ray.wait(results_ids)
for id in finished:
val=ray.get(id)
prosumers[ray.get(val.get_name.remote())]=val
#count_processes = len(prosumer_dict.keys())
#pool = Pool(os.cpu_count())
#parallel_func = partial(process_each_prosumer, input_profiles = input_profiles, t_start = t_start, t_horizon = t_horizon, t_step = t_step, prosumer_strategy = prosumer_strategy)
#mapped_values = list(tqdm(pool.map(parallel_func, list(prosumer_dict.keys()), list(prosumer_dict.values())), total = count_processes))
# Normal processing, one core only
else:
for prosumer_name in list(prosumer_dict.keys()):
try:
prosumers[prosumer_name] = process_each_prosumer(prosumer_name, prosumer_dict[prosumer_name], input_profiles, t_start, t_horizon, t_step, prosumer_strategy)
except KeyError:
print('Infeasible')
pass
'''
community_assets_dict = {'ca_bat': {'topology_path': 'input_files/models/district_models/example_CA',
'config_path': 'input_files/models/district_models/example_CA/config.csv',
'profiles': {'irradiance': 'irradiance_3',
......@@ -111,4 +102,5 @@ community_dict = {'community': {'config_path': 'input_files/models/district_mode
community_strategy = ['max_operational_profit']
community_main = main_district.MainDistrict(community_dict, prosumers, community_assets, input_profiles, t_start, t_horizon, t_step, community_assets_strategy, community_strategy)
'''
\ No newline at end of file
ray.shutdown()
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