热门公司

招聘

职位Bosch

Mandatory Internship Development and Validation of Conventional and AI-Based Electric Arc Detection Methods for Next-Generation Automotive Electrical Systems

Bosch

Mandatory Internship Development and Validation of Conventional and AI-Based Electric Arc Detection Methods for Next-Generation Automotive Electrical Systems

Bosch

Stuttgart

·

On-site

·

Internship

·

3d ago

Electric arc detection represents a critical safety and reliability challenge in modern and future automotive electrical systems. As vehicles transition to electrified powertrains with increasingly complex, higher-voltage architectures (e.g., the new 48 V voltage level system), the risk of electrical arcing caused by various failure modes, including electrode degradation, connector faults, wire damage and intermittent contacts, poses a significant threat to vehicle safety and system performance. Undetected electrical arcs can lead to: safety hazards: fire risk, thermal damage and potential harm to occupants; system reliability issues: component degradation, unexpected system failures and reduced operational lifetime; performance degradation: power delivery interruptions, electromagnetic interference affecting sensitive electronics. Current arc detection methods face limitations in accurately distinguishing between genuine arc events and normal operational transients across diverse load types (resistive, inductive, power electronics) and environmental conditions (noise, impedance variations, electromagnetic disturbances). The automotive industry urgently requires robust, intelligent detection algorithms capable of operating reliably in real-world conditions while minimizing false positives and negatives. This internship addresses this critical need by combining cutting-edge AI/ML technologies with comprehensive experimental validation to develop next-generation arc detection solutions for future automotive electrical systems.

  • During your internship, you will establish a comprehensive arc detection database through systematic measurement and data collection across various load types: Resistive (R), Inductive (I) and Power electronic loads (P); arc types: series and parallel arcs; arc scenarios: electrode degradation, plug/connector faults, guillotine wire cuts, pendulum-type contact and intermittent contacts; environmental conditions: various noise levels, impedance variations and electromagnetic disturbances.
  • You will benchmark existing arc detection methods (Zone Arc, Vbased, Ibased and other commercial solutions) through development and verification using collected data.
  • In addition, you will validate them under real test conditions using test bench infrastructure and assess their performance via Monte Carlo simulations for robustness analysis.
  • Furthermore, you will prototype novel AI/ML-based arc detection algorithms utilizing: Deep Learning (DL), Convolutional Neural Networks (CNN), Recurrent Neural Networks (RNN), Support Vector Machines (SVM) and Auto Encoder architectures, AI-generative modelling to enhance and expand training datasets.
  • Last but not least, you will validate all methods using professional test bench equipment. The Standalone Arc Bench with electronic loads (resistive, power, current, PWM capabilities) and the Integrated Arc Bench@Lab Car with realistic load benches, including ZoneECU, EPS (steering system), brake systems and Cooling Fan components.
  • Education:

Master studies in the field of Electrical Engineering, Automotive Engineering or comparable

  • Experience and Knowledge:
  • strong academic record with coursework in power electronics, signal processing and/or Machine Learning
  • proficient programming skills in Python and/or MATLAB
  • familiarity with automotive electrical systems and safety standards
  • experience with experimental work and measurement equipment
  • Personality and Working Practice:

you are an adaptable, self-motivated individual who can work independently; you have strong teamwork skills; you are detail-oriented, committed to quality as well as eager to learn new technical domains

  • Enthusiasm:

for emerging automotive technologies

  • Languages:

business fluent in German and English

Start:

according to prior agreement

Duration:

3 - 6 months (confirmation of mandatory internship required)

Requirement for this internship is the enrollment at university. Please attach your CV, transcript of records, enrollment certificate, examination regulations and if indicated a valid work and residence permit.

Diversity and inclusion are not just trends for us but are firmly anchored in our corporate culture. Therefore, we welcome all applications, regardless of gender, age, disability, religion, ethnic origin or sexual identity.

Need further information about the job?

Zhiyi Xu (Functional Department)
+49 711 811 92252

Work #LikeABosch starts here: Apply now!

At Bosch, we shape the future by inventing high-quality technologies and services that spark enthusiasm and enrich people’s lives. Our promise to our associates is rock-solid: we grow together, we enjoy our work, and we inspire each other.

Join in and feel the difference.

The Robert Bosch GmbH is looking forward to your application!

总浏览量

0

申请点击数

0

模拟申请者数

0

收藏

0

关于Bosch

Bosch

Bosch

Public

Robert Bosch GmbH, commonly known as Bosch, is a German multinational engineering and technology company headquartered in Gerlingen, Baden-Württemberg, Germany. The company was founded by Robert Bosch in Stuttgart in 1886. Bosch is 94% owned by the Robert Bosch Stiftung, a charitable institution.

10,001+

员工数

Gerlingen

总部位置

评价

2.8

3条评价

工作生活平衡

2.5

薪酬

3.0

企业文化

2.5

职业发展

2.8

管理层

3.2

25%

推荐给朋友

优点

Global 500 company reputation

Professional management

Good resume value

缺点

Poor work hours

Forced resignations

Limited career alignment

薪资范围

522个数据点

Senior/L5

Senior/L5 · Business Development Manager - Press

1份报告

$175,455

年薪总额

基本工资

$152,570

股票

-

奖金

-

$175,455

$175,455

面试经验

4次面试

难度

3.0

/ 5

时长

14-28周

体验

正面 0%

中性 75%

负面 25%

面试流程

1

Application Review

2

HR Screen

3

Technical Interview

4

Hiring Manager Interview

5

Final Round

6

Offer

常见问题

Technical Knowledge

Behavioral/STAR

Past Experience

Coding/Algorithm

Culture Fit