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Coatings Formulation
(2023)
Photovoice as a participatory method: impacts on the individual, community and societal levels
(2023)
Composite Mechanics
(2023)
Approach to denoising of interfered 4-channel FMCW radar data using Convolutional Neural Network
(2023)
Estimation of uncertainties in sample results and their impact on Reliability Demonstration Tests
(2023)
Approach to denoising of interfered 4-channel FMCW radar data using Convolutional Neural Network
(2023)
Acceptance of E-Motorcycles
(2023)
HElmar-LiMo 2040
(2023)
High‑cell‑density cultivation of Vibrio natriegens in a low‑chloride chemically defined medium
(2023)
Accelerated Life Cycle Analysis of Lithium-Ion-Batteries under Different Fast-charging Algorithms
(2023)
Acceptance of e-motorcycles
(2023)
Latency and sampling compensation in mixed-reality-in-the-loop simulations of production systems
(2023)
Securing software is one of the most important parts in modern software development.
Fuzzing has become one of the most popular methods to automatically test software.
Most fuzzing approaches need the target software to be recompiled which presupposes
source code to be available. When no source code is available, black box fuzzers are
used. In modern software, states play a big role in its functioning. A black box fuzzer
can come to its limits quick when operating on a stateful target with no knowledge.
The use of a state machine in a fuzzer can make the fuzzer more effective.
This thesis introduces a state machine estimation tool for black box systems. An
approach to estimate the state machine with state-of-the-art algorithms over a defined
interface is proposed. Fuzzing will be used to find more inputs and states of the target
to make a more complete state machine. The implemented approach is evaluated on
two stateful targets LightFTP and BFTPD. With a set of pre-known inputs, the
tool was able to correctly estimate the state machines of the targets and the fuzzing
method proved to be successful in finding more states and inputs. Multiple fuzzing
techniques and automata learning algorithms were benchmarked to find the most
successful combination.
Inside the “Sandbox”
(2022)
Latency and sampling compensation in mixed-reality-in-the-loop simulations of production systems
(2022)
Influence of Silicon Content on the Mechanical Properties of Additively Manufactured Al-Si Alloys
(2022)