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Analisis Kinerja Multithreading Pada Resilient Backpropagation

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Lampiran A

Tabel A.1 Feature Dataset Triaxial

No Nama Feature No Nama Feature

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Tabel A.2 Feature Dataset Triaxial (lanjutan)

38 tBodyAcc-correlation()-X,Y 318 fBodyAcc-bandsEnergy()-9,16 39 tBodyAcc-correlation()-X,Z 319 fBodyAcc-bandsEnergy()-17,24 40 tBodyAcc-correlation()-Y,Z 320 fBodyAcc-bandsEnergy()-25,32 41 tGravityAcc-mean()-X 321 fBodyAcc-bandsEnergy()-33,40 42 tGravityAcc-mean()-Y 322 fBodyAcc-bandsEnergy()-41,48 43 tGravityAcc-mean()-Z 323 fBodyAcc-bandsEnergy()-49,56 44 tGravityAcc-std()-X 324 fBodyAcc-bandsEnergy()-57,64 45 tGravityAcc-std()-Y 325 fBodyAcc-bandsEnergy()-1,16 46 tGravityAcc-std()-Z 326 fBodyAcc-bandsEnergy()-17,32 47 tGravityAcc-mad()-X 327 fBodyAcc-bandsEnergy()-33,48 48 tGravityAcc-mad()-Y 328 fBodyAcc-bandsEnergy()-49,64 49 tGravityAcc-mad()-Z 329 fBodyAcc-bandsEnergy()-1,24 50 tGravityAcc-max()-X 330 fBodyAcc-bandsEnergy()-25,48 51 tGravityAcc-max()-Y 331 fBodyAcc-bandsEnergy()-1,8 52 tGravityAcc-max()-Z 332 fBodyAcc-bandsEnergy()-9,16 53 tGravityAcc-min()-X 333 fBodyAcc-bandsEnergy()-17,24 54 tGravityAcc-min()-Y 334 fBodyAcc-bandsEnergy()-25,32 55 tGravityAcc-min()-Z 335 fBodyAcc-bandsEnergy()-33,40 56 tGravityAcc-sma() 336 fBodyAcc-bandsEnergy()-41,48 57 tGravityAcc-energy()-X 337 fBodyAcc-bandsEnergy()-49,56 58 tGravityAcc-energy()-Y 338 fBodyAcc-bandsEnergy()-57,64 59 tGravityAcc-energy()-Z 339 fBodyAcc-bandsEnergy()-1,16 60 tGravityAcc-iqr()-X 340 fBodyAcc-bandsEnergy()-17,32 61 tGravityAcc-iqr()-Y 341 fBodyAcc-bandsEnergy()-33,48 62 tGravityAcc-iqr()-Z 342 fBodyAcc-bandsEnergy()-49,64 63 tGravityAcc-entropy()-X 343 fBodyAcc-bandsEnergy()-1,24 64 tGravityAcc-entropy()-Y 344 fBodyAcc-bandsEnergy()-25,48 65 tGravityAcc-entropy()-Z 345 fBodyAccJerk-mean()-X

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Tabel A.4 Feature Dataset Triaxial (lanjutan)

122 tBodyGyro-mean()-Y 402 fBodyAccJerk-bandsEnergy()-49,56 123 tBodyGyro-mean()-Z 403 fBodyAccJerk-bandsEnergy()-57,64 124 tBodyGyro-std()-X 404 fBodyAccJerk-bandsEnergy()-1,16 125 tBodyGyro-std()-Y 405 fBodyAccJerk-bandsEnergy()-17,32 126 tBodyGyro-std()-Z 406 fBodyAccJerk-bandsEnergy()-33,48 127 tBodyGyro-mad()-X 407 fBodyAccJerk-bandsEnergy()-49,64 128 tBodyGyro-mad()-Y 408 fBodyAccJerk-bandsEnergy()-1,24 129 tBodyGyro-mad()-Z 409 fBodyAccJerk-bandsEnergy()-25,48 130 tBodyGyro-max()-X 410 fBodyAccJerk-bandsEnergy()-1,8 131 tBodyGyro-max()-Y 411 fBodyAccJerk-bandsEnergy()-9,16 132 tBodyGyro-max()-Z 412 fBodyAccJerk-bandsEnergy()-17,24 133 tBodyGyro-min()-X 413 fBodyAccJerk-bandsEnergy()-25,32 134 tBodyGyro-min()-Y 414 fBodyAccJerk-bandsEnergy()-33,40 135 tBodyGyro-min()-Z 415 fBodyAccJerk-bandsEnergy()-41,48 136 tBodyGyro-sma() 416 fBodyAccJerk-bandsEnergy()-49,56 137 tBodyGyro-energy()-X 417 fBodyAccJerk-bandsEnergy()-57,64 138 tBodyGyro-energy()-Y 418 fBodyAccJerk-bandsEnergy()-1,16 139 tBodyGyro-energy()-Z 419 fBodyAccJerk-bandsEnergy()-17,32 140 tBodyGyro-iqr()-X 420 fBodyAccJerk-bandsEnergy()-33,48 141 tBodyGyro-iqr()-Y 421 fBodyAccJerk-bandsEnergy()-49,64 142 tBodyGyro-iqr()-Z 422 fBodyAccJerk-bandsEnergy()-1,24 143 tBodyGyro-entropy()-X 423 fBodyAccJerk-bandsEnergy()-25,48 144 tBodyGyro-entropy()-Y 424 fBodyGyro-mean()-X

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Tabel A.6 Feature Dataset Triaxial (lanjutan)

206 tBodyAccMag-sma() 486 fBodyGyro-bandsEnergy()-49,64 207 tBodyAccMag-energy() 487 fBodyGyro-bandsEnergy()-1,24 208 tBodyAccMag-iqr() 488 fBodyGyro-bandsEnergy()-25,48 209 tBodyAccMag-entropy() 489 fBodyGyro-bandsEnergy()-1,8 210 tBodyAccMag-arCoeff()1 490 fBodyGyro-bandsEnergy()-9,16 211 tBodyAccMag-arCoeff()2 491 fBodyGyro-bandsEnergy()-17,24 212 tBodyAccMag-arCoeff()3 492 fBodyGyro-bandsEnergy()-25,32 213 tBodyAccMag-arCoeff()4 493 fBodyGyro-bandsEnergy()-33,40 214 tGravityAccMag-mean() 494 fBodyGyro-bandsEnergy()-41,48 215 tGravityAccMag-std() 495 fBodyGyro-bandsEnergy()-49,56 216 tGravityAccMag-mad() 496 fBodyGyro-bandsEnergy()-57,64 217 tGravityAccMag-max() 497 fBodyGyro-bandsEnergy()-1,16 218 tGravityAccMag-min() 498 fBodyGyro-bandsEnergy()-17,32 219 tGravityAccMag-sma() 499 fBodyGyro-bandsEnergy()-33,48 220 tGravityAccMag-energy() 500 fBodyGyro-bandsEnergy()-49,64 221 tGravityAccMag-iqr() 501 fBodyGyro-bandsEnergy()-1,24 222 tGravityAccMag-entropy() 502 fBodyGyro-bandsEnergy()-25,48 223 tGravityAccMag-arCoeff()1 503 fBodyAccMag-mean()

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Tabel A.7 Feature Dataset Triaxial (lanjutan)

248 tBodyGyroMag-entropy() 528 fBodyBodyAccJerkMag-kurtosis() 249 tBodyGyroMag-arCoeff()1 529 fBodyBodyGyroMag-mean() 250 tBodyGyroMag-arCoeff()2 530 fBodyBodyGyroMag-std() 251 tBodyGyroMag-arCoeff()3 531 fBodyBodyGyroMag-mad() 252 tBodyGyroMag-arCoeff()4 532 fBodyBodyGyroMag-max() 253 tBodyGyroJerkMag-mean() 533 fBodyBodyGyroMag-min() 254 tBodyGyroJerkMag-std() 534 fBodyBodyGyroMag-sma() 255 tBodyGyroJerkMag-mad() 535 fBodyBodyGyroMag-energy() 256 tBodyGyroJerkMag-max() 536 fBodyBodyGyroMag-iqr() 257 tBodyGyroJerkMag-min() 537 fBodyBodyGyroMag-entropy() 258 tBodyGyroJerkMag-sma() 538 fBodyBodyGyroMag-maxInds 259 tBodyGyroJerkMag-energy() 539 fBodyBodyGyroMag-meanFreq() 260 tBodyGyroJerkMag-iqr() 540 fBodyBodyGyroMag-skewness() 261 tBodyGyroJerkMag-entropy() 541 fBodyBodyGyroMag-kurtosis() 262 tBodyGyroJerkMag-arCoeff()1 542 fBodyBodyGyroJerkMag-mean() 263 tBodyGyroJerkMag-arCoeff()2 543 fBodyBodyGyroJerkMag-std() 264 tBodyGyroJerkMag-arCoeff()3 544 fBodyBodyGyroJerkMag-mad() 265 tBodyGyroJerkMag-arCoeff()4 545 fBodyBodyGyroJerkMag-max() 266 fBodyAcc-mean()-X 546 fBodyBodyGyroJerkMag-min() 267 fBodyAcc-mean()-Y 547 fBodyBodyGyroJerkMag-sma() 268 fBodyAcc-mean()-Z 548 fBodyBodyGyroJerkMag-energy() 269 fBodyAcc-std()-X 549 fBodyBodyGyroJerkMag-iqr() 270 fBodyAcc-std()-Y 550 fBodyBodyGyroJerkMag-entropy() 271 fBodyAcc-std()-Z 551 fBodyBodyGyroJerkMag-maxInds 272 fBodyAcc-mad()-X 552 fBodyBodyGyroJerkMag-meanFreq() 273 fBodyAcc-mad()-Y 553 fBodyBodyGyroJerkMag-skewness() 274 fBodyAcc-mad()-Z 554 fBodyBodyGyroJerkMag-kurtosis() 275 fBodyAcc-max()-X 555 angle(tBodyAccMean,gravity)

276 fBodyAcc-max()-Y 556 angle(tBodyAccJerkMean),gravityMean) 277 fBodyAcc-max()-Z 557 angle(tBodyGyroMean,gravityMean) 278 fBodyAcc-min()-X 558 angle(tBodyGyroJerkMean,gravityMean) 279 fBodyAcc-min()-Y 559 angle(X,gravityMean)

280 fBodyAcc-min()-Z 560 angle(Y,gravityMean)

Gambar

Tabel A.1 Feature Dataset Triaxial
Tabel A.2 Feature Dataset Triaxial (lanjutan)
Tabel A.3 Feature Dataset Triaxial (lanjutan)
Tabel A.4 Feature Dataset Triaxial (lanjutan)
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