Rear Window Defrosting

HYPOTHESES

REAR WINDOW DEFOGGERS REDUCE RELEVANT CRASHES IN THE PRESENCE OF ANY ONE OR MORE CONDITIONS WHEN THEY ARE MOST LIKELY USED (but the effect does not increase if there is more than one adverse condition) and REAR WINDOW DEFOGGERS REDUCE RELEVANT CRASHES ALL THE TIME


Index | Table of contents | Technical Report | Executive Summary | Background | Rear Window Defrogger and Wiper Information | State Crash Data | Analysis Databases | Analysis Method | Hypotheses | Conclusions | Appendix A


Hypotheses 1 | Hypotheses 2 | Hypotheses 3 |

HYPOTHESES –

This model contained two independent variables that indicate if rear window defoggers are effective. DEF_USED indicates if the presence of rear window defoggers when they are most likely to be used affects the rate of changing lane and backing crashes. DEF indicates if the mere presence of rear window defoggers affects the rate of changing lane and backing crashes. In other words, DEF will indicate if rear window defoggers are effective all of the time and DEF_USED will indicate if rear window defoggers are effective in the conditions when they are most likely to be used. Thus, the DEF_USED coefficient in the model will test our hypothesis that defoggers reduce relevant crashes when they are most likely used. But the DEF coefficient must also be included in the logistic regression (because interaction terms such as DEF_USED should not be included without also including the main effects DEF and USED). DEF will indicate if defoggers when present affect relevant crashes. We believe that just the presence of rear window defoggers should not have an effect on relevant crashes. If our hypothesis is correct that defoggers reduce relevant crashes when used and they have no effect when they are not used, then the DEF_USED coefficient should be negative and significant and the DEF coefficient should be close to zero. In fact, even if the DEF coefficient were substantial, we suspect it more likely indicates a possible bias in the model or data than a real effect of defoggers. We believe DEF_USED is the more important coefficient.

Table 10 shows the results of the logistic regression for the 1986-1999 Florida data. The coefficient for DEF_USED is –0.00002, in the “right” direction but not statistically significant (Chi-Square = 0.002).

Technically, the DEF_USED coefficient represents the change in the log odds ratio of relevant (changing lanes and backing) to non-relevant (stopped) crashes when defoggers are most likely used for a 1 percent increase in the percentage of cars with rear window defoggers. A negative coefficient represents a reduction that is associated with the presence of rear window defoggers when most likely used. Thus, a 100 percent increase in the percentage of cars with rear window defoggers is associated with 0.002 reduction in the log of relevant crash rate when defoggers are most likely used. The coefficient can be translated into the percentage change in the expected number of relevant crashes in the following way:

Expected percentage effectiveness = 100*[1-exp (DEF coefficient*100)].

In other words, cars with rear window defoggers when they are most likely used have 100 * [1- (exp (.002))] = 0.2 percent reduction in changing lanes and backing crashes relative to crashes where the vehicle was stopped. Rear window defoggers when most likely used have no effect on relevant crash, since the chi-square value is 0.002 and chi-square needs to be at least 3.89 for statistical significance at the 0.05 level.

The coefficient for DEF is 0.00162, in the “wrong” direction but also non-significant (Chi-Square = 3.184). Thus, the Florida data do not show any statistically significant effect for defoggers.

Table 10

1986-1999 Florida

Cars With Rear Impacts That Were Changing Lanes, Backing Up, Slowing, Stopped, Or Stalled

Parameter

Estimate

Standard
Error

Wald
Chi-Square

Pr > ChiSq

Intercept

-1.6579

0.1343

152.2927

<.0001

DEF

0.00162

0.000909

3.184

0.0744

DEF_USED

-0.00002

0.000435

0.002

0.9647

USED

-0.1511

0.0416

13.1992

0.0003

ADWEA

-0.7571

0.0234

1051.1949

<.0001

WINTER

0.0518

0.0233

4.9489

0.0261

MORN

-0.0985

0.0196

25.165

<.0001

VEHAGE

0.0173

0.00427

16.3514

<.0001

VEHAGE2

0.000608

0.000225

7.3093

0.0069

CY86

0.0273

0.0448

0.3715

0.5422

CY87

-0.1325

0.0426

9.6577

0.0019

CY88

-0.1503

0.0399

14.2253

0.0002

CY89

-0.1073

0.0373

8.2893

0.004

CY90

-0.1011

0.0361

7.83

0.0051

CY91

-0.0766

0.0347

4.8868

0.0271

CY92

-0.0459

0.0327

1.9701

0.1604

CY93

-0.0979

0.0319

9.4068

0.0022

CY94

-0.1121

0.0306

13.4317

0.0002

CY95

0.013

0.028

0.2165

0.6417

CY96

-0.2027

0.0284

50.9083

<.0001

CY97

-0.0186

0.0264

0.4957

0.4814

CY98

0.0373

0.0254

2.1556

0.142

DRVMALE

-0.0285

0.0296

0.9264

0.3358

M14_30

0.0502

0.0022

521.6789

<.0001

M30_50

0.0175

0.00151

134.1712

<.0001

M50_70

0.0276

0.00168

269.659

<.0001

M70_96

0.0996

0.00282

1243.4684

<.0001

F14_30

0.0549

0.0024

520.9121

<.0001

F30_50

0.000669

0.0016

0.1753

0.6755

F50_70

0.0471

0.00182

671.5062

<.0001

F70_96

0.0886

0.00359

609.8991

<.0001

CAVALIER1

-0.8086

0.1146

49.7464

<.0001

ESCORT1

-0.8556

0.1179

52.6484

<.0001

CAPRICE1

0.0319

0.1123

0.0805

0.7766

TAURUS1

-0.6526

0.1212

28.979

<.0001

TEMPO

-0.6629

0.1172

31.9908

<.0001

CELEBRITY

-0.7663

0.1196

41.0775

<.0001

GRANDAM

-0.8848

0.1185

55.708

<.0001

CIERA

-0.8502

0.12

50.1573

<.0001

CUTLASS1

-0.5913

0.1166

25.7121

<.0001

CHEVETTE

-0.4266

0.1243

11.7865

0.0006

CENTURY1

-0.845

0.1217

48.2322

<.0001

MUSTANG

-0.6024

0.1145

27.6735

<.0001

RELIANT

-0.8532

0.1263

45.6675

<.0001

CORSICA

-0.6775

0.1247

29.5101

<.0001

SUNBIRD

-0.8745

0.1272

47.2302

<.0001

ESCORT2

-0.8156

0.1234

43.6733

<.0001

MONTE1

-0.5853

0.1183

24.4601

<.0001

CROWNVIC

0.3289

0.1175

7.8379

0.0051

LUMINA

-0.6828

0.1272

28.8221

<.0001

CITATION

-0.5525

0.141

15.3483

<.0001

ARIES

-0.8317

0.1248

44.4337

<.0001

FAIRMONT

-0.4133

0.12

11.8572

0.0006

MALIBU

-0.5068

0.124

16.6945

<.0001

ACCORD1

-0.8565

0.1264

45.8754

<.0001

REGAL

-0.5897

0.1188

24.6408

<.0001

P6000

-0.638

0.1287

24.574

<.0001

DELTA1

-0.1761

0.1193

2.1787

0.1399

GMARQUIS

-0.5362

0.1215

19.4728

<.0001

OMNI4DR

-0.7307

0.163

20.0868

<.0001

SABLE

-0.7579

0.1309

33.5421

<.0001

LESABRE1

-0.9783

0.1276

58.7781

<.0001

TOPAZ

-0.6658

0.1337

24.7831

<.0001

SHADOW

-0.8883

0.1365

42.3473

<.0001

SUNDANCE

-0.8107

0.1395

33.7796

<.0001

DEVILLE1

-0.3088

0.1219

6.4152

0.0113

DEVILLE2

-0.4892

0.1261

15.0633

0.0001

BERETTA

-0.5711

0.1292

19.5558

<.0001

THUNDER1

-0.6749

0.1272

28.1715

<.0001

COUGAR1

-0.6792

0.1297

27.4176

<.0001

SKYLARK1

-0.592

0.138

18.399

<.0001

DEVILLE3

-0.6975

0.1208

33.3294

<.0001

HORIZON

-0.6784

0.1704

15.8464

<.0001

SATURN

-1.1415

0.1323

74.4713

<.0001

CAVALIER2

-1.107

0.1426

60.27

<.0001

SKYLARK2

-0.943

0.1324

50.7292

<.0001

CALAIS

-0.9328

0.1331

49.0969

<.0001

DELTA2

-0.8705

0.1318

43.6156

<.0001

GRANDPRIX1

-0.8488

0.1348

39.6177

<.0001

Table 10 – Continued

Parameter

Estimate

Standard
Error

Wald
Chi-Square

Pr > ChiSq

CIVIC1

-0.9198

0.1254

53.8029

<.0001

LESABRE2

-0.3507

0.1229

8.1429

0.0043

GRANADA

-0.1958

0.1293

2.2906

0.1302

TOWNCAR

-0.4348

0.1223

12.6429

0.0004

ACCORD2

-1.0276

0.1292

63.2644

<.0001

ACCORD3

-0.791

0.1275

38.4732

<.0001

SENTRA1

-1.1258

0.127

78.6326

<.0001

CAMRY1

-0.8883

0.1268

49.0939

<.0001

LTD

0.0808

0.1248

0.4191

0.5174

VOLARE

-0.2067

0.129

2.5661

0.1092

CAPRICE2

-0.0625

0.1284

0.2372

0.6262

CIVIC2

-1.1626

0.1349

74.2177

<.0001

ACCLAIM

-0.7761

0.1489

27.1552

<.0001

GRANDPRIX2

-0.339

0.1216

7.7791

0.0053

CUTLASS2

-0.0547

0.1281

0.1827

0.6691

SUPREME1

-0.6846

0.1463

21.8879

<.0001

SKYHAWK

-0.7723

0.156

24.5135

<.0001

ELECTRA

-1.14

0.1385

67.7382

<.0001

HORNET

-0.0827

0.1386

0.3563

0.5506

MONTE2

-0.1587

0.136

1.3605

0.2435

BONNEVILLE

-0.1353

0.1315

1.0581

0.3037

PARISIENNE

-0.3587

0.1503

5.6926

0.017

NOVA1

-0.2251

0.1257

3.2076

0.0733

CAMARO

-0.4467

0.1218

13.4537

0.0002

PINTO

-0.019

0.1439

0.0175

0.8948

LEBARON1

-0.8419

0.1371

37.7211

<.0001

CAMRY2

-0.6545

0.1312

24.881

<.0001

ASPEN

-0.3034

0.129

5.5308

0.0187

TAURUS2

-0.7342

0.1473

24.8572

<.0001

ALTIMA

-0.921

0.1314

49.1283

<.0001

DAYTONA

-0.8438

0.1475

32.7431

<.0001

THUNDER2

-0.3195

0.1313

5.9238

0.0149

CHEVELLE

0.1859

0.1463

1.6149

0.2038

SPIRIT

-0.7976

0.1496

28.432

<.0001

LEGACY

-1.1856

0.2229

28.2828

<.0001

PROBE

-0.8096

0.1453

31.0575

<.0001

OLDS98

-0.9531

0.1377

47.9346

<.0001

LEBARON2

-0.6259

0.139

20.2716

<.0001

DYNASTY

-0.819

0.1529

28.7071

<.0001

MONZA

-0.4225

0.1687

6.2762

0.0122

EAGLE

-0.1943

0.338

0.3304

0.5654

OMEGA

-0.4624

0.1804

6.5732

0.0104

NEONPLY

-0.7177

0.1925

13.9012

0.0002

NEONDOD

-0.8636

0.1769

23.8328

<.0001

ZEPHYR

-0.4222

0.1492

8.0099

0.0047

FIREBIRD

-0.4837

0.1298

13.8907

0.0002

CENTURY2

-0.3467

0.1546

5.0307

0.0249

THUNDER3

-0.855

0.1361

39.4743

<.0001

INTREPID

-0.5406

0.1558

12.0399

0.0005

MARQUIS

-0.5115

0.1399

13.37

0.0003

COUGAR2

-0.753

0.1433

27.5981

<.0001

LEBARON3

-0.2955

0.1508

3.8413

0.05

CORDOBA

-0.2765

0.1558

3.1491

0.076

NEWYORKER

-0.899

0.1519

35.033

<.0001

DART

-0.1866

0.1528

1.4905

0.2221

DIPLOMAT

0.3079

0.1245

6.111

0.0134

CONTOUR

-0.8677

0.1639

28.0303

<.0001

FIRENZA

-0.7187

0.1702

17.8207

<.0001

SUPREME2

-0.5465

0.1229

19.7705

<.0001

LEGACY1

-0.6543

0.3883

2.839

0.092

NOVA2

-0.8272

0.1522

29.5268

<.0001

COUGAR3

-0.1681

0.143

1.382

0.2398

VALIANT

-0.2049

0.2075

0.9752

0.3234

GREMLIN

-0.3648

0.1803

4.094

0.043

JETTA

-1.0479

0.1388

56.9669

<.0001

COROLLA

-1.0354

0.1256

67.916

<.0001

LOYALE

-0.9161

0.1702

28.9677

<.0001

ACCORD4

-0.9514

0.1339

50.4566

<.0001

VOL240

-1.068

0.1382

59.7267

<.0001

EXCEL

-0.9987

0.1326

56.6941

<.0001

MAXIMA1

-0.8257

0.1376

36.0173

<.0001

SUBARU

-0.8949

0.1716

27.2023

<.0001

SPECTRUM

-1.0584

0.1526

48.0771

<.0001

GOLF

-1.0393

0.161

41.6642

<.0001

TERCEL

-1.0464

0.195

28.7966

<.0001

SENTRA2

-0.9259

0.1374

45.4432

<.0001

RABBIT

-1.1188

0.1591

49.4222

<.0001

MAXIMA2

-0.8316

0.1391

35.7504

<.0001

CELICA

-0.6559

0.1372

22.8457

<.0001

The regression coefficient (0.0173) for VEHAGE shows that changing lanes and backing crashes increase relative to stopped involvements, as cars get older. Changing lanes and backing crashes increase 2 percent for every year a car gets older. The negative regression coefficient for almost all of the CY terms implies that changing lanes and backing crashes were less common in the past than in recent years. VEHAGE, VEHAGE2, and most of the CY terms are included in the model because they are significant.

The coefficients of the other independent variables seem reasonable. The positive coefficients for M14_30, M70+, F14_30, and F70+ show that the youngest and oldest drivers are especially prone to backing up or changing lane crashes. ADWEA and MORN are negative, indicating that changing lanes and backing crashes decrease relative to stopped involvements during adverse weather and early morning. USED is also negative, indicating the relevant crashes decrease during conditions when rear window defoggers are most likely used.

The make-model indicator variables are used only as control variables in the model. Some will have high or low coefficient values by chance alone indicating more or fewer changing lane and backing crashes than the average. We could reduce the number of these variables, if we grouped several make-models together. But there is no basis to group them. For example, not all small cars are driven in such a manner that they have fewer (or more) relevant crashes than large cars. Thus, all the individual make-model terms are included in the model and it is irrelevant if certain make-model terms are significant and others are not.

A similar model was run on the Michigan database. The adverse weather indicator variable for Michigan also had a value of 1 if the crash occurred when it was snowing, sleeting, hailing or freezing rain. Michigan’s model included 34 additional make-models not included in the Florida model that had at least 750 crashes in Michigan.

The only other difference in the model was the number of individual CY terms. Since 1981-1991 Michigan data were analyzed, the model had 10 individual CY terms: CY81, CY82, …, CY90.

Table 11 shows the DEF_USED and DEF coefficients, percent reduction, and significance for the model by State. All of the results are non-significant indicating that rear window defoggers have no effect on changing lane and backing crashes, in all conditions and in conditions when they are most likely used. The DEF_USED coefficient in Michigan is in the “wrong” direction, corresponding to a 5 percent increase in changing lane and backing crashes, but this effect is not statistically significant.

Table 11

DEF_USED And DEF Coefficients And Percent Reduction By State

State

DEF_USED

DEF

Coeff

Percent Reduction

Coeff

Percent Reduction

Michigan

0.00047

-5%

0.00015

-2%

Florida

-0.00002

0.2%

0.00162

-18%

Index | Table of contents | Technical Report | Executive Summary | Background | Rear Window Defrogger and Wiper Information | State Crash Data | Analysis Databases | Analysis Method | Hypotheses | Conclusions | Appendix A